--- tags: - medical --- # Dataset Usage ## Description The Mimic-IV dataset generate data by executing the Pipeline available on https://github.com/healthylaife/MIMIC-IV-Data-Pipeline. ## Function Signature ```python load_dataset('thbndi/Mimic4Dataset', task, mimic_path=mimic_data, config_path=config_file, encoding=encod, generate_cohort=gen_cohort, val_size=size, cache_dir=cache) ``` ## Arguments 1. `task` (string) : - Description: Specifies the task you want to perform with the dataset. - Default: "Mortality" - Note: Possible Values : 'Phenotype', 'Length of Stay', 'Readmission', 'Mortality' 2. `mimic_path` (string) : - Description: Complete path to the Mimic-IV raw data on user's machine. - Note: You need to provide the appropriate path where the Mimic-IV data is stored. The path should end with the version of mimic (eg : mimiciv/2.2). Supported version : 2.2 and 1.0 as provided by the authors of the pipeline. 3. `config_path` (string) optionnal : - Description: Path to the configuration file for the cohort generation choices (more infos in '/config/readme.md'). - Default: Configuration file provided in the 'config' folder. 4. `encoding` (string) optionnal : - Description: Data encoding option for the features. - Options: "concat", "aggreg", "tensor", "raw", "text" - Default: "concat" - Note: Choose one of the following options for data encoding: - "concat": Concatenates the one-hot encoded diagnoses, demographic data vector, and dynamic features at each measured time instant, resulting in a high-dimensional feature vector. - "aggreg": Concatenates the one-hot encoded diagnoses, demographic data vector, and dynamic features, where each item_id is replaced by the average of the measured time instants, resulting in a reduced-dimensional feature vector. - "tensor": Represents each feature as an 2D array. There are separate arrays for labels, demographic data ('DEMO'), diagnosis ('COND'), medications ('MEDS'), procedures ('PROC'), chart/lab events ('CHART/LAB'), and output events data ('OUT'). Dynamic features are represented as 2D arrays where each row contains values at a specific time instant. - "raw": Provide cohort from the pipeline without any encoding for custom data processing. - "text": Represents diagnoses as text suitable for BERT or other similar text-based models. - For 'concat' and 'aggreg' the composition of the vector is given in './data/dict/"task"/features_aggreg.csv' or './data/dict/"task"/features_concat.csv' file and in 'features_names' column of the dataset. 5. `generate_cohort` (bool) optionnal : - Description: Determines whether to generate a new cohort from Mimic-IV data. - Default: True - Note: Set it to True to generate a cohort, or False to skip cohort generation. 6. `val_size`, 'test_size' (float) optionnal : - Description: Proportion of the dataset used for validation during training. - Default: 0.1 for validation size and 0.2 for testing size. - Note: Can be set to 0. 7. `cache_dir` (string) optionnal : - Description: Directory where the processed dataset will be cached. - Note: Providing a cache directory for each encoding type can avoid errors when changing the encoding type. ## Example Usage ```python import datasets from datasets import load_dataset # Example 1: Load dataset with default settings dataset = load_dataset('thbndi/Mimic4Dataset', task="Mortality", mimic_path="/path/to/mimic_data") # Example 2: Load dataset with custom settings dataset = load_dataset('thbndi/Mimic4Dataset', task="Phenotype", mimic_path="/path/to/mimic_data", config_path="/path/to/config_file", encoding="aggreg", generate_cohort=False, val_size=0.2, cache_dir="/path/to/cache_dir") ``` Please note that the provided examples are for illustrative purposes only, and you should adjust the paths and settings based on your actual dataset and specific use case.