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794dc2b
"""
CRISPR Array Detection - HuggingFace Spaces App
"""
import os
import html
import logging
import tempfile
os.environ['TF_CPP_MIN_LOG_LEVEL'] = '2'
os.environ.setdefault("MPLCONFIGDIR", os.path.join(tempfile.gettempdir(), "matplotlib"))
import gradio as gr
import numpy as np
import matplotlib
matplotlib.use('Agg')
import matplotlib.pyplot as plt
from matplotlib.colors import TwoSlopeNorm, ListedColormap
from matplotlib.collections import LineCollection
import umap
from sklearn.cluster import AgglomerativeClustering
import plotly.graph_objects as go
from plotly.subplots import make_subplots
import plotly.express as px
from inference import predict_sequence, embed_sequence, WINDOW_SIZE
from inference.model_loader import get_model, warmup_model, get_gpu_status
from inference.tokenizer import validate_sequence, strip_fasta_header
from inference.inference import detect_crispr_regions
logging.basicConfig(level=os.environ.get("LOG_LEVEL", "INFO"))
logger = logging.getLogger(__name__)
MAX_SEQUENCE_LENGTH = int(os.environ.get("MAX_SEQUENCE_LENGTH", "50000"))
MAX_UPLOAD_BYTES = int(os.environ.get("MAX_UPLOAD_BYTES", str(2 * 1024 * 1024)))
MAX_SEQUENCE_VIEWER_LENGTH = int(os.environ.get("MAX_SEQUENCE_VIEWER_LENGTH", "20000"))
QUEUE_MAX_SIZE = int(os.environ.get("GRADIO_QUEUE_MAX_SIZE", "8"))
DEFAULT_STRIDE = int(os.environ.get("DEFAULT_STRIDE", "500"))
DEFAULT_THRESHOLD = float(os.environ.get("DEFAULT_THRESHOLD", "0.3"))
# Custom CSS - Minimal monochrome design with Geist fonts
CUSTOM_CSS = """
@import url('https://fonts.googleapis.com/css2?family=Inter:wght@300;400;500;600&display=swap');
@font-face {
font-family: 'Geist Mono';
src: url('https://cdn.jsdelivr.net/npm/geist@1.2.0/dist/fonts/geist-mono/GeistMono-Regular.woff2') format('woff2');
font-weight: 400;
}
@font-face {
font-family: 'Geist Mono';
src: url('https://cdn.jsdelivr.net/npm/geist@1.2.0/dist/fonts/geist-mono/GeistMono-Medium.woff2') format('woff2');
font-weight: 500;
}
* {
font-family: 'Inter', -apple-system, BlinkMacSystemFont, system-ui, sans-serif !important;
}
code, pre, .code, textarea, .prose code {
font-family: 'Geist Mono', 'SF Mono', Consolas, monospace !important;
}
h1 {
font-weight: 500 !important;
letter-spacing: -0.02em !important;
}
h2, h3, h4 {
font-weight: 500 !important;
color: #18181b !important;
}
.gradio-container {
max-width: 100% !important;
background: #fafafa !important;
}
.gr-button-primary {
background: #18181b !important;
border: none !important;
}
.gr-button-primary:hover {
background: #27272a !important;
}
.gr-button-secondary {
background: #fff !important;
border: 1px solid #e4e4e7 !important;
color: #18181b !important;
}
.gr-panel {
border: 1px solid #e4e4e7 !important;
background: #fff !important;
}
/* Minimal table styling */
table {
border-collapse: collapse !important;
}
th, td {
border-bottom: 1px solid #e4e4e7 !important;
padding: 8px 12px !important;
}
th {
font-weight: 500 !important;
text-transform: uppercase !important;
font-size: 11px !important;
letter-spacing: 0.05em !important;
color: #71717a !important;
}
/* Slider styling */
input[type="range"] {
accent-color: #18181b !important;
}
/* Tab styling */
.tab-nav button {
font-weight: 400 !important;
color: #52525b !important;
}
.tab-nav button.selected {
color: #18181b !important;
border-bottom: 2px solid #18181b !important;
}
"""
# Real example sequences from training data
CRISPR_EXAMPLE = """TCCCCATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTCTGTTTACTTCCCTCTATATCTTTTTTTGTTCGGTCATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTAAAATCACACTCACAGCCAATACAAGCGGGGGGGGAAATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTTGCAGTAGGGCAGACTGGCAGTTTTCGGGTAATGATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACATTCATACGAATAATCATTTCCGAAAGACTCCTTTTATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACAGGTCATGAGCATTCAAAACGTTCTCCCCGTTCAATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTAGCCTGGACCAAATAATGTACGAACCTCTCCATCTATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACATGAATTATATAACAGGGATTAAAATTTTTCTTATTATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTAAATTTGAGCAAATACTAAAAAAATGAGACAAAAAGATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTCCGGCAATGAATTGATAGGACTTAAAATAATTGTATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACACCAAGAAAATGAAAGAAATTTTCTTTGGAGAAACATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTGAGCCATCGACGGTCTCCGGAAGTAAAACCCCAAAATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACACATTCAAGTCGCTGCCTACCGTTGAAACATGGAAATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACCTTAATGGAAAGGCACGTAATACAAACGCGGGTAAATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTATCACGTTGAA"""
NON_CRISPR_EXAMPLE = """TTCGTTCATTTTTCTGGTTTGACCAATAGCATTTAAAGCCGCCCCACATAAATCATTTGGCCCGGAAACCTTTTGGTAAGATAAAATAGTGCCATCACTAGAAAGCTCAATTCTAATATCACAGACCTTACCAAAAAAACGACTATCACCACGAAAATATGGCTTCACAGATTTATAGATAATACCTGCATACCTCGAACCCGCCTTACCGCCATCGCCTGCGCCCGCTGAAGCACCTGAACCCTGGCTGCCTTGTTTATTTATGTTACTACCTTGCAAAGCACTGCCGCCGCCCACATCACCGCCATTAAAAAAATCATCTAATGCATTTTGATCAGCTCGACGTTGCGCATCCGCTTTCGCTTTGGCTTCCGCATCTGCCTTAGCCTTGGCGTCAGCTTTCGCTTTAGCATCGGCCTTAGCTTTTGCTTCTGCGTCAGCTTTCGCTTTAGCATCCGCTTTGGCTTTTGCATCAGCTTCCGCCTTCGCTTTAGCCTGCGCCTCTGCTTTTGCCTTAGCTTCCGCCTCTGCTTTGGCTTTTGCCTCTTGTTTTGCTTTCTCGTCTGCCTGCACTTTGGCTTTTGCTTCTTCTTCCGCTTGTTTTGCAGCATCTGCTAAACGTTTTGCCTCAGCTTCAGCTTTGAGCTTAGCGGCTTCAGCAGCCTGTTTGGCTTTCGCCTCTTCTGCCTGTTTTTGCTTTTCCAAGGCTTCTAAGCGAGCTTTTTCTTCCTGTTGCTTTTTCTGTTCAGCCAAGAACCTTTGTCTTTCCAGCTCTTTTTGCTGTTCCAGTTCTTTCTGACGGGCAATTTCCTGTTGACGTTGTTGCTCTTTTAACACTTCCCGTTGTTTTTCTTCTTCCCGTTTCTGCTCTTCACGTTTTTGGTCTTCAAGGGCTTGTTTCTTTTGTCTGTCCGCCTGACCTTTTTTCTGTTGTTGAATTCGCCCCCATTCCTGCGCTGCCGAGCCCGTATCAACCATCACGGCGCCGATAACTTCACCG"""
# Flanked CRISPR example: upstream (500bp) + CRISPR array (10 repeats) + downstream (500bp)
# This shows nice visualization with low score on flanks and high score in the middle
FLANKED_CRISPR_EXAMPLE = """ATGCGATCGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATTCCCCATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTCTGTTTACTTCCCTCTATATCTTTTTTTGTTCGGTCATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTAAAATCACACTCACAGCCAATACAAGCGGGGGGGGAAATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTTGCAGTAGGGCAGACTGGCAGTTTTCGGGTAATGATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACATTCATACGAATAATCATTTCCGAAAGACTCCTTTTATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACAGGTCATGAGCATTCAAAACGTTCTCCCCGTTCAATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTAGCCTGGACCAAATAATGTACGAACCTCTCCATCTATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACATGAATTATATAACAGGGATTAAAATTTTTCTTATTATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTAAATTTGAGCAAATACTAAAAAAATGAGACAAAAAGATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTCCGGCAATGAATTGATAGGACTTAAAATAATTGTATTCGAGAGCAAGATCCACTAAAACAAGGATTGAAACTATCACGTTGAACGATCGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGAT"""
# E. coli K-12 MG1655 CRISPR I-E example (based on real genomic region)
# Contains the characteristic 29bp repeat: CGGTTTATCCCCGCTGGCGCGGGGAACTC
# Structure: ~400bp upstream (cas genes) + CRISPR array (8 repeats + 7 spacers) + ~400bp downstream
ECOLI_CRISPR_EXAMPLE = """ATGGATGAACGAAATCGTCAGGTGCTGGAACAACGCCTGCGCCAGCATATCGATGCGCTGGAAGCGCGCAGCAATGATGTCACCTGCCAGACGCTGGAACTGCTGCGCGATGGCGACGTACTGGATGCCGTGCTGGCGGATGCCCGCAAAGAGCTGGACGCACACCGCTTCCTGCTGGAAGACGGCTACACCACGCTGCAACAGATCGCCAACCTGCCGGGCGTGACCTCGATGCTGGACGACGGCGACATCCACCTGCACTGCGTGCTCGGCGTGCCGCAGCGCCGTGGCGAACATATCGAACAGTTCGCCCGCGAGCATTACCAGAATCCGCTGCAAACGCTGCGCGAGTGACGGTTTATCCCCGCTGGCGCGGGGAACTCGAAAGCTACGTTGATATTGCGCTATCTCATCGACGGTTTATCCCCGCTGGCGCGGGGAACTCTGCAGAACTCGAGGGATGAAACGGTCTTGCGGTTTATCCCCGCTGGCGCGGGGAACTCAATGAAGAAATGCTTCGATTTCGTAGCCGTTCGGTTTATCCCCGCTGGCGCGGGGAACTCGTTGTCTGGATGGATCGATCAATCTCATACAACGGTTTATCCCCGCTGGCGCGGGGAACTCCAGAACGATTCGCCACGGTCTGTTGATTAACCGGTTTATCCCCGCTGGCGCGGGGAACTCTGAAGTTGATGATGATTCCGATCAGCACCACGGTTTATCCCCGCTGGCGCGGGGAACTCATGATCTTGCAGGCGCGCCAGCACTTCAGCCATCGGTTTATCCCCGCTGGCGCGGGGAACTCGCGATGGCGATTTCATTACTGATGCGGCGTGAGCGTGGTGCAACATCCGCGCCCGCTGACGCGTTTTTTTGTATCCGGATAGCGTCAGCCGATGGCTGAAGCGGCGAGCAAGCTCTGAAGCGCAGCGCAATCGCGCCCTGATGGCGATGGCGCGTAATGATTTCACCGACGATATCGACATCGATATCGTCCAGGCTGCGCAGGATCAGGGCGATACGCAAACGCCCGCCTTCGCCAGCGATAATGCTGCCGCCACCCAGCAGCGCGCCCCAGAACACGGCGGCGAGGATGACGATGAAGCCGAAACGCCACAGCAGGCTGCCACAGCC"""
# Longer examples for State-Dynamic Plot (upstream + CRISPR array + downstream)
# Structure: ~600bp upstream | CRISPR array (25 repeats + 24 spacers) | ~600bp downstream
# Total: ~3000 bp - ideal for seeing alternating patterns in State-Dynamic Plot
EMBEDDING_CRISPR_EXAMPLE = """GACAGGTACAAGAAGGAGTATGCATCAATGTGGTCGTGTGGAACAAACGCCACTGGAGACTGGGTTAACCATTCGCTCCAGCGTCATGAAAGTCACTGTTAGGGCGACCTTCGATTCGGATGTGACATTTCATTACATTACGCTCAGGACTGCGAACGAAAGATTAAGAATGCTTAACCCGGTACCTAACCCATCTGATTTTTACACACTCTCCTTGGACTGGGAGGTATAAGGAATAGGCGGTAGACGCCTACTTAACTTTCATGGTGATCGTAAAGCGGAGCCTTACCATGCGGCAATTGTGAACTTTTAAATTCGATTTTTAGCTTTTCTATTATCCTAAACTTCGCTGTATATCACGCGGCGCGATGGGGCAGCCTGCCCCCACTGTGCGACCGGCCACTTAAGGCTTGAAAACTACGAGCAGATTACATGAATCTGTGTTGGGTGTGCCAGTGGCACCCGAAGGACGCACTGGTTCACTTTCGGGAACACGCACAGACGAGACACACTCTTCAAGTCGTGTTAAAAGGAGTAGGATTAACGTCGAGGATTGATTCCCGCTTATGTGCGTCTGCCGCTTATACGCATAATCTGCATGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACACCCAGCCATATTGGCGTTCTGCCAAATCGGAACCGGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACCCAATCAAATATTTACTACATTTACCGACCGCGCTCGTTTTAGAGCTATGCTGTTTTGAATGGTCACAAAACAGCAATCTTCGTAAATGCTAAAGGATCGGGGCACGAGTTTTAGTTCTATGCTGTGTTGAATGGTCCCAAAACCAGCTAGCTCCCTCAGCTCACCTACACCCGACCGTGGTTTTAGAGTAATGCCGTTTTGAATGGTCCCAAAACCATCTCAGTCCAGTTGTGTGAAATAGCTGGACTGGTGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACGTGTAAGGGTCGCGCTCTGCAACCAGCGGTTACGCCGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACAGAGTCTGATCTCTTAGGAACCCGGCGATGCCTGGCGTTTTAGATCTATGCTGTTTTGAATGGTCCCAAAACGTCCTCGGGTGTCCTCCTTTGGCCGTGCGGTCCTAAGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACGTATCTTATTAGTCACGTCCGGTAGCTCGGGACCGAGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACGCGGAATTACGAGAGGGACGAAGAGTCGCACTGCTGGGTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACACAATTAGGTTAAGCGTAACGTTATATGGTTATTGCGTTTTAGGGCTATGCTGTTTTGAATGGTCCCAAAACGTATGGCTCTATTATCAGATGTCGCCGCATCTTCCGGTTTTAGAGCTATGCTGTTTTGAATGGACCCAAAATCGGGCCAGAGCTATGTTAAAAGTCCCCGTAGTGTTAGTTCTAGAGCTATGCTGTTTTGAACGGTCCCAAAACTATGGTACTCTTCTACTCCTCGGAGTGAAGGGCAACGTTTTAGGGCTATGCTGTTTTGAATGGTCCCAAAACTCGTCCTTTACTACTTCGCGACTCAGGGGGTCGCCGGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACGACCGGATCCTATGCCTGCAGCAAGACATTGGGCCCGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACCAGGCACAGGGTGCACCACAATTGCGCTCAATCCGAGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACCGCGCCTTGATTTTTATAGTTGCGCCCGTAGCTCTCATTTTAGAGCTATGCTGTATTCATTGGTCCCAAAACCCGAGGACAAGAGTTCAACGACTATTATAGAGCGGAGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACATGCGTTTAACAATGGGCGAGGCCGATGCGTGAGGTGTTTTAGAGCTATGCTGTTTTGTATGGTCCCAAAACGAGATACCATTGTGCCCGCACGTATTTACCTCGAAGGTTTTAGAGCTGTGGTGTTTTGAATGGTCCCAAAACAGCTACCTGGCCAATGAACCGTACCAAGTGATCAACGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACCCCCTCCAGGGCTCACCGTATGACGCTCGCCAGATCGTTTTAGAGCTATGCTGTTTTGAATGGTCCCAAAACAGATAAGTTCAGTTTTTCTCACAATTTGATGTTAGAGTTTTAGAGGTATGCTGTTTTGAATGGTCCCTAAACAGCTGGCTAAGCGCGCGCGCCAAAGTAACGTGCAAAAAGCTGGATCTGCCAATCTCAGAAGCTATGTAGCCTTCGGGTAAGAAAACGCAGGCGTTGGTCGGTTAACGGCAGGTGCAACCCATTGTTGCATCGTAGGCACCGTCGCTTGCCCTCGTGGCACTGTAGTCGATGAAGGATTCATCGGCTTAGCTGTTCTCTGTCCGTCAGCGGCCAGGATAGGTCGTTCAGGTTCGCGCGACTCGGTTTCCGTTAAGTTGCAGTCGTATCCAGGTAATGATACCCATTGACCGGCCTACCAGGTCTGCGGGAGCTCTGCGGGGGTGTGCCGGACGAAGTGTTCTCTGCATATTGTTTCTAGCGGGTTAAATGTAATTCCATCCATACGGTCGACACCTACCTTAGGTCCAATCGGGATAAGATAATCATATAACAGAATACAAGGGCTGAGTATTGCTACCGCTAAGACGGCTGCGAGTGTGACACCCACGCATATAAGTGGGCACGTTGTGCGAGAATCTGTTTTGGATTCAGCCATGCAGAGACCCGTGAAAGGCGCCCTACCGCGACGACAACCAGACGGTTATAATTGGGCAACTGTTA"""
# Random genomic sequence (no CRISPR) - for comparison in State-Dynamic Plot
EMBEDDING_RANDOM_EXAMPLE = """ATGCGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCTGATCGATCGATCGATCGATCGTAGCTAGCTAGCTAGCTAGCTGATCGATCGATCGTAGCTAGCTAGCT"""
def _count_fasta_records(text: str) -> int:
return sum(1 for line in text.splitlines() if line.strip().startswith(">"))
def normalize_sequence_input(sequence: str) -> tuple[bool, str, str]:
"""Clean and validate a single-sequence FASTA/raw DNA input."""
if sequence is None:
return False, "", "Sequence is empty"
text = str(sequence).strip()
if not text:
return False, "", "Sequence is empty"
if _count_fasta_records(text) > 1:
return False, "", "Multi-FASTA input is not supported. Please submit one sequence at a time."
cleaned = strip_fasta_header(text)
is_valid, error = validate_sequence(cleaned)
if not is_valid:
return False, cleaned, error
if len(cleaned) > MAX_SEQUENCE_LENGTH:
return (
False,
cleaned,
f"Sequence too long: {len(cleaned):,} bp > {MAX_SEQUENCE_LENGTH:,} bp limit",
)
return True, cleaned, ""
def validate_stride(stride) -> tuple[bool, int, str]:
if isinstance(stride, bool):
return False, 0, "Stride must be an integer between 50 and 500 bp"
try:
if isinstance(stride, float) and not stride.is_integer():
raise ValueError
stride = int(stride)
except (TypeError, ValueError):
return False, 0, "Stride must be an integer between 50 and 500 bp"
if not 50 <= stride <= 500:
return False, stride, "Stride must be between 50 and 500 bp"
return True, stride, ""
def validate_threshold(threshold) -> tuple[bool, float, str]:
try:
threshold = float(threshold)
except (TypeError, ValueError):
return False, 0.0, "Threshold must be a number between 0 and 1"
if not 0.0 <= threshold <= 1.0:
return False, threshold, "Threshold must be between 0 and 1"
return True, threshold, ""
def validate_min_length(min_length) -> tuple[bool, int, str]:
try:
if isinstance(min_length, float) and not min_length.is_integer():
raise ValueError
min_length = int(min_length)
except (TypeError, ValueError):
return False, 0, "Minimum region length must be an integer"
if min_length < 1:
return False, min_length, "Minimum region length must be at least 1 bp"
return True, min_length, ""
def prediction_error_outputs(message: str):
return None, f"**Error**: {message}", [], None, None, None, None, None, ""
def embedding_error_outputs(message: str):
return None, f"**Error**: {message}", None, None
def make_output_dir(prefix: str) -> str:
return tempfile.mkdtemp(prefix=f"{prefix}_")
def symmetric_activation_norm(values) -> TwoSlopeNorm:
values = np.asarray(values, dtype=float)
finite = values[np.isfinite(values)]
if finite.size == 0:
vmax = 1.0
else:
vmax = max(abs(float(np.nanmin(finite))), abs(float(np.nanmax(finite))))
if vmax <= 0:
vmax = 1.0
return TwoSlopeNorm(vmin=-vmax, vcenter=0, vmax=vmax)
def create_prediction_plot(positions, probabilities, threshold=0.3, regions=None):
"""Create a matplotlib figure showing the prediction curve (for PNG/PDF export)."""
fig, ax = plt.subplots(figsize=(12, 4))
# Plot probability curve
ax.fill_between(positions, probabilities, alpha=0.3, color='blue')
ax.plot(positions, probabilities, color='blue', linewidth=0.5)
# Add threshold line
ax.axhline(y=threshold, color='red', linestyle='--', alpha=0.7, label=f'Threshold ({threshold})')
# Highlight regions above threshold
above_threshold = np.array(probabilities) >= threshold
if any(above_threshold):
ax.fill_between(positions, probabilities, where=above_threshold,
alpha=0.5, color='red', label='Predicted CRISPR')
ax.set_xlabel('Position (bp)')
ax.set_ylabel('CRISPR Probability')
ax.set_title('CRISPR Array Detection Score')
ax.set_ylim(0, 1)
ax.set_xlim(min(positions) if positions else 1, max(positions) if positions else 1000)
ax.legend(loc='upper right')
ax.grid(True, alpha=0.3)
plt.tight_layout()
return fig
def create_interactive_prediction_plot(positions, probabilities, threshold=0.3, regions=None):
"""Create an interactive Plotly figure showing the prediction curve with minimap."""
fig = go.Figure()
min_pos = min(positions) if positions else 1
max_pos = max(positions) if positions else 1000
# Main probability curve with fill - monochrome
fig.add_trace(go.Scatter(
x=positions,
y=probabilities,
mode='lines',
name='Score',
line=dict(color='#18181b', width=1.5),
fill='tozeroy',
fillcolor='rgba(24, 24, 27, 0.08)',
hovertemplate='Position: %{x:,} bp<br>Score: %{y:.3f}<extra></extra>'
))
# Add threshold line - dashed gray
fig.add_hline(
y=threshold,
line_dash="dash",
line_color="#71717a",
annotation_text=f"threshold={threshold}",
annotation_position="top right",
annotation_font_size=10,
annotation_font_color="#71717a"
)
# Highlight detected CRISPR regions - subtle gray
if regions:
for r in regions:
fig.add_vrect(
x0=r['start'], x1=r['end'],
fillcolor="rgba(24, 24, 27, 0.06)",
layer="below",
line_width=1,
line_color="rgba(24, 24, 27, 0.2)",
annotation_text=f"#{r['region_id']}",
annotation_position="top left",
annotation_font_size=9,
annotation_font_color="#52525b"
)
fig.update_layout(
title=None,
xaxis=dict(
title=dict(text='Position (bp)', font=dict(size=11, color='#52525b')),
range=[min_pos, max_pos],
gridcolor='#f4f4f5',
showgrid=True,
zeroline=False,
linecolor='#e4e4e7',
tickfont=dict(size=10, color='#71717a'),
rangeslider=dict(
visible=True,
thickness=0.06,
bgcolor='#fafafa',
bordercolor='#e4e4e7',
borderwidth=1
),
),
yaxis=dict(
title=dict(text='Score', font=dict(size=11, color='#52525b')),
range=[0, 1.05],
gridcolor='#f4f4f5',
showgrid=True,
zeroline=False,
linecolor='#e4e4e7',
tickfont=dict(size=10, color='#71717a'),
tickformat='.1f'
),
hovermode='x unified',
showlegend=False,
height=420,
plot_bgcolor='#fafafa',
paper_bgcolor='#fafafa',
margin=dict(t=50, b=60, l=50, r=20),
font=dict(family='Inter, system-ui, sans-serif')
)
return fig
def create_embedding_heatmap(embedding, title="Sequence Embedding", cols=30):
"""Create a heatmap visualization of the embedding vector."""
embedding = np.array(embedding)
n_dims = len(embedding)
# Calculate grid dimensions
rows = int(np.ceil(n_dims / cols))
# Pad embedding to fill grid
padded_size = rows * cols
padded = np.full(padded_size, np.nan)
padded[:n_dims] = embedding
# Reshape to 2D grid
grid = padded.reshape(rows, cols)
# Create figure
fig, ax = plt.subplots(figsize=(14, max(3, rows * 0.25)))
# Use diverging colormap centered at 0; constant embeddings need a non-zero span.
norm = symmetric_activation_norm(embedding)
im = ax.imshow(grid, cmap='RdBu_r', norm=norm, aspect='auto')
# Add colorbar
cbar = plt.colorbar(im, ax=ax, shrink=0.8, pad=0.02)
cbar.set_label('Activation', fontsize=10)
# Labels
ax.set_xlabel(f'Dimension (columns of {cols})', fontsize=10)
ax.set_ylabel('Row', fontsize=10)
ax.set_title(f'{title} ({n_dims} dimensions)', fontsize=12, fontweight='bold')
# Add dimension markers
ax.set_xticks(np.arange(0, cols, 5))
ax.set_xticklabels([str(i) for i in range(0, cols, 5)], fontsize=8)
ax.set_yticks(np.arange(rows))
ax.set_yticklabels([f'{i*cols}-{min((i+1)*cols-1, n_dims-1)}' for i in range(rows)], fontsize=8)
plt.tight_layout()
return fig
def create_trajectory_heatmap(embeddings, title="Embedding Trajectory"):
"""Create a heatmap showing how embeddings change across windows."""
embeddings = np.array(embeddings)
n_windows, n_dims = embeddings.shape
# Subsample dimensions if too many
if n_dims > 100:
step = n_dims // 100
embeddings = embeddings[:, ::step]
n_dims = embeddings.shape[1]
dim_label = f'Dimension (subsampled, every {step}th)'
else:
dim_label = 'Dimension'
fig, ax = plt.subplots(figsize=(14, max(4, n_windows * 0.3)))
# Use diverging colormap; constant embeddings need a non-zero span.
norm = symmetric_activation_norm(embeddings)
im = ax.imshow(embeddings, cmap='RdBu_r', norm=norm, aspect='auto')
cbar = plt.colorbar(im, ax=ax, shrink=0.8, pad=0.02)
cbar.set_label('Activation', fontsize=10)
ax.set_xlabel(dim_label, fontsize=10)
ax.set_ylabel('Window', fontsize=10)
ax.set_title(f'{title} ({n_windows} windows)', fontsize=12, fontweight='bold')
plt.tight_layout()
return fig
def create_state_dynamic_plot(embeddings, n_clusters=8, stride=100):
"""
Create State-Dynamic Plot showing embedding trajectory in 2D with clustering.
Similar to Figure 3 from the DFG SPP 2141 report - visualizes how different
sequence regions (repeats, spacers, etc.) cluster in embedding space.
"""
embeddings = np.array(embeddings)
n_windows, n_dims = embeddings.shape
if n_windows < 5:
# Not enough points for meaningful visualization
fig, ax = plt.subplots(figsize=(10, 8))
ax.text(0.5, 0.5, "Need longer sequence for State-Dynamic Plot\n(minimum ~1500 bp)",
ha='center', va='center', fontsize=14)
ax.set_xlim(0, 1)
ax.set_ylim(0, 1)
ax.axis('off')
return fig
# Apply UMAP for dimensionality reduction
n_neighbors = min(15, n_windows - 1)
reducer = umap.UMAP(
n_components=2,
n_neighbors=n_neighbors,
min_dist=0.1,
metric='euclidean',
random_state=42
)
embedding_2d = reducer.fit_transform(embeddings)
# Apply clustering
n_clusters = min(n_clusters, n_windows)
clustering = AgglomerativeClustering(n_clusters=n_clusters)
cluster_labels = clustering.fit_predict(embeddings)
# Create figure with two subplots
fig, axes = plt.subplots(1, 2, figsize=(16, 7))
# Define colors for clusters
colors = plt.cm.tab10(np.linspace(0, 1, n_clusters))
cluster_cmap = ListedColormap(colors)
# === Left plot: Colored by cluster ===
ax1 = axes[0]
# Draw trajectory lines (connecting sequential windows)
points = embedding_2d.reshape(-1, 1, 2)
segments = np.concatenate([points[:-1], points[1:]], axis=1)
# Color segments by cluster of starting point
segment_colors = [colors[cluster_labels[i]] for i in range(len(segments))]
lc = LineCollection(segments, colors=segment_colors, alpha=0.3, linewidths=1)
ax1.add_collection(lc)
# Scatter plot colored by cluster
scatter1 = ax1.scatter(
embedding_2d[:, 0], embedding_2d[:, 1],
c=cluster_labels, cmap=cluster_cmap,
s=60, alpha=0.8, edgecolors='white', linewidths=0.5
)
# Mark start and end
ax1.scatter(embedding_2d[0, 0], embedding_2d[0, 1],
c='green', s=200, marker='^', edgecolors='black',
linewidths=2, label='Start', zorder=10)
ax1.scatter(embedding_2d[-1, 0], embedding_2d[-1, 1],
c='red', s=200, marker='s', edgecolors='black',
linewidths=2, label='End', zorder=10)
ax1.set_xlabel('UMAP 1', fontsize=11)
ax1.set_ylabel('UMAP 2', fontsize=11)
ax1.set_title('State-Dynamic Plot (by cluster)', fontsize=12, fontweight='bold')
ax1.legend(loc='upper right')
# Add colorbar for clusters
cbar1 = plt.colorbar(scatter1, ax=ax1, shrink=0.8)
cbar1.set_label('Cluster', fontsize=10)
cbar1.set_ticks(np.arange(n_clusters))
# === Right plot: Colored by position ===
ax2 = axes[1]
# Draw trajectory lines colored by position
positions = np.arange(n_windows)
norm = plt.Normalize(0, n_windows - 1)
segment_colors_pos = plt.cm.viridis(norm(positions[:-1]))
lc2 = LineCollection(segments, colors=segment_colors_pos, alpha=0.4, linewidths=1.5)
ax2.add_collection(lc2)
# Scatter plot colored by position
scatter2 = ax2.scatter(
embedding_2d[:, 0], embedding_2d[:, 1],
c=positions, cmap='viridis',
s=60, alpha=0.8, edgecolors='white', linewidths=0.5
)
# Mark start and end
ax2.scatter(embedding_2d[0, 0], embedding_2d[0, 1],
c='green', s=200, marker='^', edgecolors='black',
linewidths=2, label='Start (5\')', zorder=10)
ax2.scatter(embedding_2d[-1, 0], embedding_2d[-1, 1],
c='red', s=200, marker='s', edgecolors='black',
linewidths=2, label='End (3\')', zorder=10)
ax2.set_xlabel('UMAP 1', fontsize=11)
ax2.set_ylabel('UMAP 2', fontsize=11)
ax2.set_title('State-Dynamic Plot (by position)', fontsize=12, fontweight='bold')
ax2.legend(loc='upper right')
# Add colorbar for position
cbar2 = plt.colorbar(scatter2, ax=ax2, shrink=0.8)
cbar2.set_label(f'Window position (×{stride} bp)', fontsize=10)
plt.tight_layout()
return fig
def create_sequence_cluster_map(cluster_labels, stride=100, window_size=1000):
"""
Create a linear map showing cluster assignments along the sequence.
Like a chromosome ideogram colored by activation cluster.
"""
n_windows = len(cluster_labels)
n_clusters = len(np.unique(cluster_labels))
# Create figure
fig, ax = plt.subplots(figsize=(14, 3))
# Define colors
colors = plt.cm.tab10(np.linspace(0, 1, max(n_clusters, 10)))
# Draw colored blocks for each window
for i, cluster in enumerate(cluster_labels):
start_pos = i * stride
end_pos = start_pos + window_size
ax.axvspan(start_pos, end_pos, alpha=0.7, color=colors[cluster],
linewidth=0)
# Add cluster legend
handles = [plt.Rectangle((0,0), 1, 1, color=colors[i], alpha=0.7)
for i in range(n_clusters)]
ax.legend(handles, [f'Cluster {i}' for i in range(n_clusters)],
loc='upper right', ncol=min(n_clusters, 5), fontsize=8)
ax.set_xlim(0, (n_windows - 1) * stride + window_size)
ax.set_ylim(0, 1)
ax.set_xlabel('Position (bp)', fontsize=11)
ax.set_ylabel('')
ax.set_yticks([])
ax.set_title('Sequence colored by embedding cluster', fontsize=12, fontweight='bold')
# Add position markers
seq_len = (n_windows - 1) * stride + window_size
for pos in range(0, int(seq_len), 500):
ax.axvline(pos, color='black', alpha=0.2, linewidth=0.5)
plt.tight_layout()
return fig
def create_interactive_state_plot(embeddings, n_clusters=8, stride=100, use_3d=False):
"""
Create interactive Plotly State-Dynamic Plot with 2D or 3D UMAP - monochrome style.
"""
embeddings = np.array(embeddings)
n_windows, n_dims = embeddings.shape
if n_windows < 5:
fig = go.Figure()
fig.add_annotation(text="Need longer sequence (minimum ~1500 bp)",
xref="paper", yref="paper", x=0.5, y=0.5,
showarrow=False, font=dict(size=14, color='#71717a'))
fig.update_layout(plot_bgcolor='#fafafa', paper_bgcolor='#fafafa')
return fig
# UMAP reduction
n_components = 3 if use_3d else 2
n_neighbors = min(15, n_windows - 1)
reducer = umap.UMAP(
n_components=n_components,
n_neighbors=n_neighbors,
min_dist=0.1,
metric='euclidean',
random_state=42
)
embedding_reduced = reducer.fit_transform(embeddings)
# Clustering
n_clusters = min(n_clusters, n_windows)
clustering = AgglomerativeClustering(n_clusters=n_clusters)
cluster_labels = clustering.fit_predict(embeddings)
# Create position info for hover
positions = np.arange(n_windows) * stride
hover_text = [f"Window {i}<br>Position: {pos}-{pos+1000} bp<br>Cluster: {c}"
for i, (pos, c) in enumerate(zip(positions, cluster_labels))]
# Colorful palette for clusters
colors = px.colors.qualitative.Set1[:n_clusters]
if use_3d:
fig = go.Figure()
# Trajectory line
fig.add_trace(go.Scatter3d(
x=embedding_reduced[:, 0],
y=embedding_reduced[:, 1],
z=embedding_reduced[:, 2],
mode='lines',
line=dict(color='rgba(100,100,100,0.3)', width=2),
name='Trajectory',
hoverinfo='skip'
))
# Points - colorful by cluster
fig.add_trace(go.Scatter3d(
x=embedding_reduced[:, 0],
y=embedding_reduced[:, 1],
z=embedding_reduced[:, 2],
mode='markers',
marker=dict(
size=5,
color=cluster_labels,
colorscale='Set1',
opacity=0.85,
line=dict(width=0.5, color='white')
),
text=hover_text,
hovertemplate='%{text}<extra></extra>',
name='Windows'
))
# Start marker - green
fig.add_trace(go.Scatter3d(
x=[embedding_reduced[0, 0]],
y=[embedding_reduced[0, 1]],
z=[embedding_reduced[0, 2]],
mode='markers',
marker=dict(size=10, color='green', symbol='diamond'),
name="5' start"
))
# End marker - red
fig.add_trace(go.Scatter3d(
x=[embedding_reduced[-1, 0]],
y=[embedding_reduced[-1, 1]],
z=[embedding_reduced[-1, 2]],
mode='markers',
marker=dict(size=10, color='red', symbol='square'),
name="3' end"
))
fig.update_layout(
title=None,
scene=dict(
xaxis=dict(title='UMAP 1', gridcolor='#e4e4e7', backgroundcolor='#fafafa'),
yaxis=dict(title='UMAP 2', gridcolor='#e4e4e7', backgroundcolor='#fafafa'),
zaxis=dict(title='UMAP 3', gridcolor='#e4e4e7', backgroundcolor='#fafafa'),
),
height=550,
showlegend=True,
legend=dict(font=dict(size=10), bgcolor='rgba(250,250,250,0.9)'),
plot_bgcolor='#fafafa',
paper_bgcolor='#fafafa',
font=dict(family='Inter, system-ui, sans-serif', color='#52525b')
)
else:
# 2D Plot with subplots
fig = make_subplots(
rows=2, cols=2,
specs=[[{"type": "scatter"}, {"type": "scatter"}],
[{"type": "scatter", "colspan": 2}, None]],
subplot_titles=('by cluster', 'by position', 'sequence map'),
row_heights=[0.6, 0.4],
vertical_spacing=0.12
)
# Left plot: by cluster
fig.add_trace(go.Scatter(
x=embedding_reduced[:, 0],
y=embedding_reduced[:, 1],
mode='lines',
line=dict(color='rgba(113,113,122,0.15)', width=1),
hoverinfo='skip',
showlegend=False
), row=1, col=1)
for c in range(n_clusters):
mask = cluster_labels == c
fig.add_trace(go.Scatter(
x=embedding_reduced[mask, 0],
y=embedding_reduced[mask, 1],
mode='markers',
marker=dict(size=7, color=colors[c], opacity=0.8,
line=dict(width=0.5, color='white')),
text=[hover_text[i] for i in np.where(mask)[0]],
hovertemplate='%{text}<extra></extra>',
name=f'{c}',
legendgroup=f'c{c}'
), row=1, col=1)
# Start/End markers
fig.add_trace(go.Scatter(
x=[embedding_reduced[0, 0]], y=[embedding_reduced[0, 1]],
mode='markers', marker=dict(size=12, color='green', symbol='triangle-up',
line=dict(width=1, color='black')),
name="5'", showlegend=True
), row=1, col=1)
fig.add_trace(go.Scatter(
x=[embedding_reduced[-1, 0]], y=[embedding_reduced[-1, 1]],
mode='markers', marker=dict(size=12, color='red', symbol='square',
line=dict(width=1, color='black')),
name="3'", showlegend=True
), row=1, col=1)
# Right plot: by position - viridis gradient
fig.add_trace(go.Scatter(
x=embedding_reduced[:, 0],
y=embedding_reduced[:, 1],
mode='lines+markers',
line=dict(color='rgba(100,100,100,0.3)', width=1),
marker=dict(size=7, color=np.arange(n_windows), colorscale='Viridis',
showscale=True, colorbar=dict(title=dict(text='window', font=dict(size=10)),
x=1.02, tickfont=dict(size=9))),
text=hover_text,
hovertemplate='%{text}<extra></extra>',
showlegend=False
), row=1, col=2)
fig.add_trace(go.Scatter(
x=[embedding_reduced[0, 0]], y=[embedding_reduced[0, 1]],
mode='markers', marker=dict(size=12, color='green', symbol='triangle-up',
line=dict(width=1, color='black')),
showlegend=False
), row=1, col=2)
fig.add_trace(go.Scatter(
x=[embedding_reduced[-1, 0]], y=[embedding_reduced[-1, 1]],
mode='markers', marker=dict(size=12, color='red', symbol='square',
line=dict(width=1, color='black')),
showlegend=False
), row=1, col=2)
# Bottom: sequence map - colorful blocks
window_size = 1000
for i, (cluster, pos) in enumerate(zip(cluster_labels, positions)):
fig.add_trace(go.Scatter(
x=[pos, pos + window_size, pos + window_size, pos, pos],
y=[0, 0, 1, 1, 0],
fill='toself',
fillcolor=colors[cluster],
line=dict(width=0),
hoverinfo='text',
text=f'Position {pos}-{pos+window_size} bp<br>Cluster {cluster}',
showlegend=False
), row=2, col=1)
fig.update_xaxes(title_text='UMAP 1', row=1, col=1, gridcolor='#f4f4f5',
tickfont=dict(size=9, color='#71717a'))
fig.update_yaxes(title_text='UMAP 2', row=1, col=1, gridcolor='#f4f4f5',
tickfont=dict(size=9, color='#71717a'))
fig.update_xaxes(title_text='UMAP 1', row=1, col=2, gridcolor='#f4f4f5',
tickfont=dict(size=9, color='#71717a'))
fig.update_yaxes(title_text='UMAP 2', row=1, col=2, gridcolor='#f4f4f5',
tickfont=dict(size=9, color='#71717a'))
fig.update_xaxes(title_text='position (bp)', row=2, col=1, gridcolor='#f4f4f5',
tickfont=dict(size=9, color='#71717a'))
fig.update_yaxes(visible=False, row=2, col=1)
fig.update_layout(
title=None,
height=650,
showlegend=True,
legend=dict(orientation='h', yanchor='bottom', y=1.02, xanchor='right', x=1,
font=dict(size=9), bgcolor='rgba(250,250,250,0.9)'),
plot_bgcolor='#fafafa',
paper_bgcolor='#fafafa',
font=dict(family='Inter, system-ui, sans-serif', color='#52525b', size=11),
margin=dict(t=40, b=40)
)
# Style subplot titles
for annotation in fig['layout']['annotations']:
annotation['font'] = dict(size=11, color='#52525b')
return fig
def parse_fasta_file(file_path):
"""Parse a FASTA file and return the sequence."""
if file_path is None:
return None
size = os.path.getsize(file_path)
if size > MAX_UPLOAD_BYTES:
raise gr.Error(f"Uploaded file is too large ({size:,} bytes > {MAX_UPLOAD_BYTES:,} byte limit).")
with open(file_path, 'r', encoding='utf-8', errors='replace') as f:
content = f.read()
is_valid, cleaned, error = normalize_sequence_input(content)
if not is_valid:
raise gr.Error(error)
return cleaned
def create_gff3_export(regions, sequence_length, sequence_id="input_sequence", output_dir=None):
"""Create GFF3 format annotation file for detected CRISPR regions."""
output_dir = output_dir or make_output_dir("crispr_export")
gff_path = os.path.join(output_dir, "crispr_regions.gff3")
with open(gff_path, 'w') as f:
# GFF3 header
f.write("##gff-version 3\n")
f.write(f"##sequence-region {sequence_id} 1 {sequence_length}\n")
for r in regions:
# GFF3 format: seqid source type start end score strand phase attributes
attributes = f"ID=CRISPR_{r['region_id']};Name=CRISPR_array_{r['region_id']};score={r['mean_score']:.3f}"
f.write(f"{sequence_id}\tCRISPR-BERT\tCRISPR_array\t{r['start']}\t{r['end']}\t{r['mean_score']:.3f}\t.\t.\t{attributes}\n")
return gff_path
def create_sequence_viewer_html(sequence, positions, probabilities, threshold=0.3, chunk_size=100):
"""Create an HTML visualization of the sequence with grayscale intensity scores."""
seq_len = len(sequence)
if seq_len > MAX_SEQUENCE_VIEWER_LENGTH:
return (
'<div style="background: #fafafa; padding: 16px; border: 1px solid #e4e4e7;">'
f'Sequence viewer disabled for sequences longer than {MAX_SEQUENCE_VIEWER_LENGTH:,} bp '
f'(current sequence: {seq_len:,} bp). Use the plot and downloads for full results.'
'</div>'
)
per_base_scores = np.asarray(probabilities, dtype=float)
if len(per_base_scores) != seq_len:
per_base_scores = np.resize(per_base_scores, seq_len)
# Generate HTML - monochrome style
html_parts = ['<div style="font-family: \'Geist Mono\', \'SF Mono\', Consolas, monospace; font-size: 11px; line-height: 1.9; background: #fafafa; padding: 16px; border: 1px solid #e4e4e7; max-height: 400px; overflow-y: auto;">']
html_parts.append('<div style="margin-bottom: 12px; font-family: Inter, system-ui, sans-serif; font-size: 11px; color: #71717a;">')
html_parts.append('<span style="background: linear-gradient(to right, #fafafa, #18181b); padding: 3px 24px; border: 1px solid #e4e4e7; display: inline-block;">low → high</span>')
html_parts.append(f'<span style="margin-left: 12px;">threshold: {threshold}</span>')
html_parts.append('</div>')
# Process sequence in chunks
for chunk_start in range(0, seq_len, chunk_size):
chunk_end = min(chunk_start + chunk_size, seq_len)
chunk_seq = sequence[chunk_start:chunk_end]
chunk_scores = per_base_scores[chunk_start:chunk_end]
# Position marker
html_parts.append(f'<div><span style="color: #a1a1aa; width: 55px; display: inline-block; font-size: 10px;">{chunk_start+1:,}</span>')
for i, (base, score) in enumerate(zip(chunk_seq, chunk_scores)):
# Grayscale intensity based on score
intensity = int(255 - score * 200) # Higher score = darker
color = f'rgb({intensity},{intensity},{intensity})'
bg_intensity = int(250 - score * 40)
bg_color = f'rgb({bg_intensity},{bg_intensity},{bg_intensity})'
font_weight = '600' if score >= threshold else '400'
safe_base = html.escape(base)
html_parts.append(f'<span style="color: {color}; background-color: {bg_color}; font-weight: {font_weight};" title="pos {chunk_start + i + 1}: {score:.3f}">{safe_base}</span>')
html_parts.append('</div>')
html_parts.append('</div>')
return ''.join(html_parts)
def predict(sequence: str, stride: int = DEFAULT_STRIDE, threshold: float = DEFAULT_THRESHOLD):
"""Predict CRISPR array probability for each position."""
import csv
import time
start_time = time.time()
is_valid, sequence, error = normalize_sequence_input(sequence)
if not is_valid:
return prediction_error_outputs(error)
is_valid, stride, error = validate_stride(stride)
if not is_valid:
return prediction_error_outputs(error)
is_valid, threshold, error = validate_threshold(threshold)
if not is_valid:
return prediction_error_outputs(error)
result = predict_sequence(sequence, stride=stride, aggregation="mean")
# Reuse the prediction result so the model only runs once per analysis.
regions = detect_crispr_regions(
sequence,
threshold=threshold,
min_length=100,
stride=stride,
prediction_result=result,
)
# User-facing coordinates are 1-based. Core inference stays 0-based.
display_positions = [pos + 1 for pos in result.positions]
# Use matplotlib figure for display AND export.
# Plotly + Gradio 6.x + heavy CUSTOM_CSS was freezing the browser after inference;
# matplotlib is the boring-and-reliable fallback to rule that out.
output_dir = make_output_dir("crispr_prediction")
fig = create_prediction_plot(display_positions, result.probabilities, threshold, regions)
png_path, pdf_path = save_figure_to_file(fig, "crispr_prediction", output_dir)
# Create CSV with prediction data
csv_path = os.path.join(output_dir, "crispr_predictions.csv")
with open(csv_path, 'w', newline='') as f:
writer = csv.writer(f)
writer.writerow(['position_1based', 'probability', 'above_threshold'])
for pos, prob in zip(result.positions, result.probabilities):
writer.writerow([pos + 1, f"{prob:.4f}", prob >= threshold])
# Create GFF3 export
gff_path = create_gff3_export(regions, result.sequence_length, output_dir=output_dir) if regions else None
# Sequence viewer disabled as a freeze-diagnostic: 1000+ inline-styled spans
# seem to block the browser after render. Re-enable once the root cause is known.
seq_viewer_html = ""
elapsed_time = time.time() - start_time
# Create summary text file
summary_path = os.path.join(output_dir, "crispr_summary.txt")
summary_text = f"""CRISPR Array Detection Summary
==============================
Sequence length: {result.sequence_length:,} bp
Windows processed: {result.num_windows}
Stride: {stride} bp
Threshold: {threshold}
Inference time: {elapsed_time:.2f} seconds
Overall score: {result.overall_score:.4f}
Max score: {max(result.probabilities):.4f}
Min score: {min(result.probabilities):.4f}
Detected CRISPR Regions: {len(regions)}
"""
if regions:
summary_text += "\nRegion Details:\n"
for r in regions:
summary_text += f" Region {r['region_id']}: {r['start']:,}-{r['end']:,} bp ({r['length']} bp), mean score: {r['mean_score']:.3f}\n"
with open(summary_path, 'w') as f:
f.write(summary_text)
# Markdown summary for display
summary = f"""## Results
| Metric | Value |
|--------|-------|
| Sequence length | {result.sequence_length:,} bp |
| Windows processed | {result.num_windows} |
| Overall score | {result.overall_score:.4f} |
| Max score | {max(result.probabilities):.4f} |
| Regions detected | {len(regions)} |
| Inference time | {elapsed_time:.2f}s |
"""
if regions:
summary += "### Detected CRISPR Regions\n\n"
for r in regions:
summary += f"- **Region {r['region_id']}**: positions {r['start']:,}-{r['end']:,} ({r['length']} bp), score: {r['mean_score']:.3f}\n"
return fig, summary, regions, png_path, pdf_path, csv_path, summary_path, gff_path, seq_viewer_html
def detect(sequence: str, threshold: float = 0.3, min_length: int = 160):
"""Detect CRISPR array regions."""
is_valid, sequence, error = normalize_sequence_input(sequence)
if not is_valid:
return [], f"**Error**: {error}"
is_valid, threshold, error = validate_threshold(threshold)
if not is_valid:
return [], f"**Error**: {error}"
is_valid, min_length, error = validate_min_length(min_length)
if not is_valid:
return [], f"**Error**: {error}"
regions = detect_crispr_regions(
sequence,
threshold=threshold,
min_length=min_length,
stride=DEFAULT_STRIDE
)
if not regions:
return [], "**No CRISPR arrays detected** above the specified threshold."
summary = f"## Detected {len(regions)} CRISPR region(s)\n\n"
for r in regions:
summary += f"- **Region {r['region_id']}**: positions {r['start']:,}-{r['end']:,} ({r['length']} bp), score: {r['mean_score']:.3f}\n"
return regions, summary
def save_figure_to_file(fig, prefix="plot", output_dir=None):
"""Save matplotlib figure to temporary files for download."""
output_dir = output_dir or make_output_dir(prefix)
# Save PNG
png_path = os.path.join(output_dir, f"{prefix}.png")
fig.savefig(png_path, dpi=150, bbox_inches='tight', facecolor='white')
# Save PDF
pdf_path = os.path.join(output_dir, f"{prefix}.pdf")
fig.savefig(pdf_path, bbox_inches='tight', facecolor='white')
return png_path, pdf_path
def get_embedding(sequence: str, mode: str = "mean", use_3d: bool = False):
"""Extract hidden state embedding and visualize as heatmap."""
allowed_modes = {"state-dynamics", "mean", "max", "trajectory", "cls"}
if mode not in allowed_modes:
return embedding_error_outputs(
"Mode must be one of: state-dynamics, mean, max, trajectory, cls"
)
is_valid, sequence, error = normalize_sequence_input(sequence)
if not is_valid:
return embedding_error_outputs(error)
result = embed_sequence(sequence, mode="trajectory" if mode == "state-dynamics" else mode)
png_path, pdf_path = None, None
output_dir = make_output_dir("crispr_embedding")
if mode == "trajectory":
# Create trajectory heatmap (windows x dimensions)
fig = create_trajectory_heatmap(
result.embeddings,
title="Embedding Trajectory Across Sequence"
)
png_path, pdf_path = save_figure_to_file(fig, "trajectory_embedding", output_dir)
summary = f"""## Trajectory Embedding
| Property | Value |
|----------|-------|
| Sequence length | {result.sequence_length:,} bp |
| Windows | {result.num_windows} |
| Embedding dim | {result.embedding_dim} |
Each row shows the embedding for one sliding window position.
Blue = negative activation, Red = positive activation.
"""
elif mode == "state-dynamics":
# Create interactive State-Dynamic Plot using Plotly
embeddings = np.array(result.embeddings)
n_windows = embeddings.shape[0]
n_clusters = min(8, max(3, n_windows // 3))
# Use the interactive Plotly version
fig = create_interactive_state_plot(embeddings, n_clusters=n_clusters, stride=100, use_3d=use_3d)
# For downloads, create a static matplotlib version
static_fig = create_state_dynamic_plot(embeddings, n_clusters=n_clusters, stride=100)
png_path, pdf_path = save_figure_to_file(static_fig, "state_dynamic_plot", output_dir)
plt.close(static_fig)
dim_text = "3D" if use_3d else "2D"
summary = f"""## Interactive State-Dynamic Plot ({dim_text})
| Property | Value |
|----------|-------|
| Sequence length | {result.sequence_length:,} bp |
| Windows analyzed | {result.num_windows} |
| Clusters identified | {n_clusters} |
| Visualization | {dim_text} UMAP |
**Interactive controls:**
- **Hover** over points to see window position and cluster
- **Zoom** by scrolling or selecting region
- **Pan** by dragging
- **{"Rotate" if use_3d else "Double-click"}** to {"rotate 3D view" if use_3d else "reset zoom"}
- **Download**: Use buttons below for PNG/PDF, or camera icon in plot toolbar
**Interpretation:**
- Points colored by cluster - similar activation patterns group together
- Trajectory shows path through embedding space along the sequence
- Alternating colors in CRISPR arrays indicate repeating structural elements (repeats vs spacers)
"""
else:
# Create single embedding heatmap
fig = create_embedding_heatmap(
result.embedding,
title=f"Sequence Embedding ({result.method})"
)
png_path, pdf_path = save_figure_to_file(fig, f"embedding_{mode}", output_dir)
summary = f"""## Embedding Extracted
| Property | Value |
|----------|-------|
| Sequence length | {result.sequence_length:,} bp |
| Pooling method | {result.method} |
| Embedding dim | {result.embedding_dim} |
Each cell represents one dimension of the {result.embedding_dim}-dimensional embedding.
Blue = negative activation, Red = positive activation.
"""
return fig, summary, png_path, pdf_path
# Build interface
with gr.Blocks(
title="CRISPR Array Detection",
theme=gr.themes.Base(
primary_hue=gr.themes.colors.zinc,
secondary_hue=gr.themes.colors.zinc,
neutral_hue=gr.themes.colors.zinc,
font=gr.themes.GoogleFont("Inter"),
font_mono=gr.themes.GoogleFont("Geist Mono"),
),
css=CUSTOM_CSS,
delete_cache=(3600, 86400),
) as demo:
gr.Markdown("""
# crispr-detect
BERT-based CRISPR array detection. 24-layer transformer (430M params) trained on metagenomic sequences.
Sliding window analysis with per-position probability scores. Export to GFF3/CSV.
""")
with gr.Tab("Prediction"):
with gr.Row():
with gr.Column(scale=1):
seq_input = gr.Textbox(
label="sequence",
placeholder="Paste DNA sequence (FASTA format accepted)...",
lines=6,
value=CRISPR_EXAMPLE,
info="min 1000 bp"
)
file_upload = gr.File(
label="upload fasta",
file_types=[".fasta", ".fa", ".fna", ".txt"],
type="filepath"
)
with gr.Row():
stride_input = gr.Slider(
minimum=50, maximum=500, value=DEFAULT_STRIDE, step=50,
label="stride",
info="500 = fast on CPU; lower = higher resolution but slower"
)
threshold_input = gr.Slider(
minimum=0.1, maximum=0.9, value=0.3, step=0.05,
label="threshold",
info="lower = sensitive, higher = specific"
)
with gr.Row():
predict_btn = gr.Button("run", variant="primary", size="lg")
gr.Markdown("*examples:*")
with gr.Row():
gr.Button("flanked", size="sm").click(
lambda: FLANKED_CRISPR_EXAMPLE, outputs=seq_input
)
gr.Button("e.coli", size="sm").click(
lambda: ECOLI_CRISPR_EXAMPLE, outputs=seq_input
)
with gr.Row():
gr.Button("crispr", size="sm").click(
lambda: CRISPR_EXAMPLE, outputs=seq_input
)
gr.Button("control", size="sm").click(
lambda: NON_CRISPR_EXAMPLE, outputs=seq_input
)
result_summary = gr.Markdown()
with gr.Accordion("export", open=False) as download_accordion:
with gr.Row():
pred_download_png = gr.File(label="png", interactive=False)
pred_download_pdf = gr.File(label="pdf", interactive=False)
with gr.Row():
pred_download_csv = gr.File(label="csv", interactive=False)
pred_download_gff = gr.File(label="gff3", interactive=False)
with gr.Row():
pred_download_summary = gr.File(label="summary", interactive=False)
with gr.Column(scale=2):
plot_output = gr.Plot(label="prediction")
seq_viewer_html = gr.HTML(visible=False)
regions_output = gr.JSON(label="Detected Regions", visible=False)
# Handle file upload - load content into textbox
def load_file_to_textbox(file_path):
if file_path:
return parse_fasta_file(file_path)
return gr.update()
file_upload.change(
load_file_to_textbox,
inputs=[file_upload],
outputs=[seq_input]
)
def predict_and_show_downloads(*args):
try:
return predict(*args)
except Exception as exc:
logger.exception("Prediction failed")
return prediction_error_outputs(f"Analysis failed: {exc}")
predict_btn.click(
predict_and_show_downloads,
inputs=[seq_input, stride_input, threshold_input],
outputs=[plot_output, result_summary, regions_output, pred_download_png, pred_download_pdf,
pred_download_csv, pred_download_summary, pred_download_gff, seq_viewer_html],
api_name="predict",
concurrency_limit=1,
)
with gr.Tab("Embeddings"):
gr.Markdown("""
### embeddings
768-dim hidden states from transformer layer 21. UMAP projection + agglomerative clustering.
Repeats cluster together, spacers form distinct groups.
""")
with gr.Row():
with gr.Column(scale=1):
embed_seq = gr.Textbox(
label="sequence",
placeholder="Paste DNA sequence...",
lines=6,
value=EMBEDDING_CRISPR_EXAMPLE,
info="min ~2000 bp for clustering"
)
embed_mode = gr.Radio(
choices=["state-dynamics", "mean", "max", "trajectory"],
value="state-dynamics",
label="mode",
info=""
)
use_3d = gr.Checkbox(
label="3D",
value=False,
info="",
visible=True
)
with gr.Row():
embed_btn = gr.Button("extract", variant="primary")
with gr.Row():
gr.Button("crispr 3kb", size="sm").click(
lambda: EMBEDDING_CRISPR_EXAMPLE, outputs=embed_seq
)
gr.Button("control 3kb", size="sm").click(
lambda: EMBEDDING_RANDOM_EXAMPLE, outputs=embed_seq
)
gr.Markdown("*example: 600bp upstream | 25 repeats + 24 spacers | 600bp downstream*")
embed_summary = gr.Markdown()
with gr.Accordion("export", open=False) as embed_download_accordion:
with gr.Row():
download_png = gr.File(label="png", interactive=False)
download_pdf = gr.File(label="pdf", interactive=False)
with gr.Column(scale=2):
embed_plot = gr.Plot(label="embedding")
# Show/hide 3D checkbox based on mode
embed_mode.change(
lambda m: gr.update(visible=(m == "state-dynamics")),
inputs=[embed_mode],
outputs=[use_3d]
)
def embed_and_show_downloads(*args):
try:
return get_embedding(*args)
except Exception as exc:
logger.exception("Embedding failed")
return embedding_error_outputs(f"Embedding failed: {exc}")
embed_btn.click(
embed_and_show_downloads,
inputs=[embed_seq, embed_mode, use_3d],
outputs=[embed_plot, embed_summary, download_png, download_pdf],
api_name="get_embedding",
concurrency_limit=1,
)
with gr.Tab("API"):
gr.Markdown("""
### api
```python
from gradio_client import Client
client = Client("genomenet/crispr-array-detection")
# predict
result = client.predict(
sequence="ATGC...",
stride=500,
threshold=0.3,
api_name="/predict"
)
# embeddings
result = client.predict(
sequence="ATGC...",
mode="state-dynamics",
use_3d=False,
api_name="/get_embedding"
)
```
**output formats**: CSV (scores), GFF3 (annotations), PNG/PDF (figures)
**local**:
```bash
git clone https://huggingface.co/spaces/genomenet/crispr-array-detection
pip install -r requirements.txt && python app.py
```
""")
with gr.Tab("About"):
gr.Markdown("""
### about
| | |
|---|---|
| architecture | BERT, 24 layers, 768 hidden, 12 heads, 430M params |
| training | metagenomic contigs, microbial genomes, CRISPRCasdb |
| window | 1000 bp |
| embedding | layer 21 (768-dim) |
**parameters**
| param | default | range |
|-------|---------|-------|
| stride | 500 bp | 50-500 |
| threshold | 0.3 | 0.1-0.9 |
**citation**
Mu, Z. (2024). Deep Learning-Based CRISPR Array Detection. Master's Thesis, HZI.
**acknowledgements**
DFG SPP 2141 (MC 172) / BMBF de.NBI GenomeNet / HZI BIFO
""")
if __name__ == "__main__":
print("Loading model...")
model = get_model()
warmup_model(model)
print(f"Model ready! GPU: {get_gpu_status()}")
demo.queue(max_size=QUEUE_MAX_SIZE, default_concurrency_limit=1)
demo.launch(
server_name="0.0.0.0",
server_port=7860,
max_threads=4,
show_error=True,
)