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import openai |
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import gradio as gr |
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openai.api_key = "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" |
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def get_completion_from_messages(messages, model="gpt-3.5-turbo", temperature=0): |
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response = openai.ChatCompletion.create( |
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model=model, |
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messages=messages, |
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temperature=temperature, |
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) |
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return response.choices[0].message["content"] |
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def get_response(text): |
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messages = [ |
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{'role':'system', 'content':'You are a paper abstract information extractor, \ |
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the user inputs a paper abstract, and you are responsible for extracting information. \ |
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The extracted information should write in the form of: What state of the cancer (this state is usually a mutation in a driver gene) is dependent on which genes or pathways. \ |
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Do not show other information. When there is no such information (ie. cancer is not dependent on any gene or pathway from the abstract), just return "No dependency"'}, |
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{'role':'user', 'content':'Abstract: In non–small cell lung cancer (NSCLC), \ |
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concurrent mutations in the oncogene KRAS and the tumor suppressor STK11 encoding the kinase LKB1 result in aggressive tumors \ |
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prone to metastasis but with liabilities arising from reprogrammed metabolism. \ |
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We previously demonstrated perturbed nitrogen metabolism and addiction to an unconventional pathway of pyrimidine synthesis in \ |
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KRAS/LKB1 co-mutant (KL) cancer cells. To gain broader insight into metabolic reprogramming in NSCLC, \ |
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we analyzed tumor metabolomes in a series of genetically engineered mouse models with oncogenic KRAS combined with mutations in LKB1 or p53. \ |
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Metabolomics and gene expression profiling pointed towards an activation of the hexosamine biosynthesis pathway (HBP), \ |
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another nitrogen-related metabolic pathway, in both mouse and human KL mutant tumors. KL cells contain high levels of HBP metabolites, \ |
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higher flux through the HBP pathway and elevated dependence on the HBP enzyme Glutamine-Fructose-6-Phosphate Transaminase 2 (GFPT2). \ |
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GFPT2 inhibition selectively reduced KL tumor cell growth in culture, xenografts and genetically-modified mice. \ |
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Our results define a new metabolic vulnerability in KL tumors and provide a rationale for targeting GFPT2 in this aggressive NSCLC subtype.'}, |
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{'role':'assistant', 'content':'KRAS/LKB1 co-mutant non–small cell lung cancer is dependent on Hexosamine biosynthesis pathway (HBP) and GFPT2.'}, |
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{'role':'user', 'content':'Abstract: Background: Thymidylate synthase (TYMS) is a successful chemotherapeutic target for anticancer therapy. \ |
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Numerous TYMS inhibitors have been developed and used for treating gastrointestinal cancer now, but they have limited clinical benefits due to \ |
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the prevalent unresponsiveness and toxicity. It is urgent to identify a predictive biomarker to guide the precise clinical use of TYMS inhibitors. \ |
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Methods: Genome-scale CRISPR-Cas9 knockout screening was performed to identify potential therapeutic targets for treating gastrointestinal tumours \ |
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as well as key regulators of raltitrexed (RTX) sensitivity. Cell-based functional assays were used to investigate how \ |
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MYC regulates TYMS transcription. Cancer patient data were used to verify the correlation between drug response and MYC and/or TYMS mRNA levels. \ |
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Finally, the role of NIPBL inactivation in gastrointestinal cancer was evaluated in vitro and in vivo. \ |
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Findings: TYMS is essential for maintaining the viability of gastrointestinal cancer cells, and is selectively inhibited by RTX. \ |
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Mechanistically, MYC presets gastrointestinal cancer sensitivity to RTX through upregulating TYMS transcription, \ |
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supported by TCGA data showing that complete response cases to TYMS inhibitors had significantly higher MYC and \ |
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TYMS mRNA levels than those of progressive diseases. NIPBL inactivation decreases the therapeutic responses of \ |
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gastrointestinal cancer to RTX through blocking MYC. Interpretation: Our study unveils a mechanism of how TYMS is \ |
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transcriptionally regulated by MYC, and provides rationales for the precise use of TYMS inhibitors in the clinic.'}, |
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{'role':'assistant', 'content':'Gastrointestinal cancer with up-regulated MYC is dependent on TYMS.'}, |
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{'role':'user', 'content':'Abstract: Studies have characterized the immune escape landscape across primary tumors. \ |
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However, whether late-stage metastatic tumors present differences in genetic immune escape (GIE) prevalence and dynamics remains unclear. \ |
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We performed a pan-cancer characterization of GIE prevalence across six immune escape pathways in 6,319 uniformly processed tumor samples. \ |
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To address the complexity of the HLA-I locus in the germline and in tumors, we developed LILAC, an open-source integrative framework. \ |
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One in four tumors harbors GIE alterations, with high mechanistic and frequency variability across cancer types. \ |
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GIE prevalence is generally consistent between primary and metastatic tumors. We reveal that GIE alterations are selected for \ |
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in tumor evolution and focal loss of heterozygosity of HLA-I tends to eliminate the HLA allele, presenting the largest neoepitope repertoire. \ |
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Finally, high mutational burden tumors showed a tendency toward focal loss of heterozygosity of HLA-I as the immune evasion mechanism, \ |
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whereas, in hypermutated tumors, other immune evasion strategies prevail.'}, |
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{'role':'assistant', 'content':'No dependency'} |
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] |
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messages.append({'role':'user', 'content':f"Abstract: {text}"}) |
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response = get_completion_from_messages(messages, temperature=0) |
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return response |
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exp = [[ |
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"Background: Triple-negative breast cancer (TNBC) is an aggressive subtype of breast cancer, \ |
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characterized high rates of tumor protein 53 (p53) mutation and limited targeted therapies. Despite being clinically advantageous, \ |
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direct targeting of mutant p53 has been largely ineffective. Therefore, we hypothesized that there exist pathways upon which p53-mutant \ |
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TNBC cells rely upon for survival. Methods: In vitro and in silico drug screens were used to identify drugs that induced preferential death in \ |
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p53 mutant breast cancer cells. The effects of the glutathione peroxidase 4 (GPX4) inhibitor ML-162 was deleniated using growth and death assays, \ |
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both in vitro and in vivo. The mechanism of ML-162 induced death was determined using small molecule inhibition and genetic knockout. \ |
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Results: High-throughput drug screening demonstrated that p53-mutant TNBCs are highly sensitive to peroxidase,cell cycle, cell division, and \ |
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proteasome inhibitors. We further characterized the effect of the Glutathione . Peroxidase 4 (GPX4) inhibitor ML-162 and demonstrated that \ |
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ML-162 induces preferential ferroptosis in p53-mutant, as compared to p53-wild type, TNBC cell lines. Treatment of p53-mutant xenografts with \ |
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ML-162 suppressed tumor growth and increased lipid peroxidation in vivo. Testing multiple ferroptosis inducers demonstrated p53-missense mutant, \ |
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and not p53-null or wild type cells, were more sensitive to ferroptosis, and that expression of mutant TP53 genes in p53-null cells sensitized \ |
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cells to ML-162 treatment. Finally, we demonstrated that p53-mutation correlates with ALOX15 expression, which rescues ML-162 induced ferroptosis. \ |
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Conclusions: This study demonstrates that p53-mutant TNBC cells have critical, unique survival pathways that can be effectively targeted. \ |
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Our results illustrate the intrinsic vulnerability of p53-mutant TNBCs to ferroptosis, and highlight GPX4 as a promising target for the \ |
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precision treatment of p53-mutant triple-negative breast cancer." |
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], |
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["T cells acquire a regulatory phenotype when their T cell antigen receptors (TCRs) experience an intermediate- to high-affinity \ |
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interaction with a self-peptide presented via the major histocompatibility complex (MHC). Using TCRβ sequences from flow-sorted human cells, \ |
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we identified TCR features that promote regulatory T cell (Treg) fate. From these results, we developed a scoring system to quantify TCR-intrinsic \ |
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regulatory potential (TiRP). When applied to the tumor microenvironment, TiRP scoring helped to explain why only some T cell clones maintained the \ |
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conventional T cell (Tconv) phenotype through expansion. To elucidate drivers of these predictive TCR features, we then examined the two elements of the \ |
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Treg TCR ligand separately: the self-peptide and the human MHC class II molecule. These analyses revealed that hydrophobicity in the third \ |
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complementarity-determining region (CDR3β) of the TCR promotes reactivity to self-peptides, while TCR variable gene (TRBV gene) usage shapes the TCR’s \ |
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general propensity for human MHC class II-restricted activation." |
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] |
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] |
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def gradio(): |
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input_text = gr.inputs.Textbox(label="Input paper abstract") |
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output_text = gr.outputs.Textbox(label="Extracted information") |
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interface = gr.Interface(fn=get_response, inputs=[input_text], outputs=output_text, examples=exp, |
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article="Example abstract from https://doi.org/10.21203/rs.3.rs-1547583/v1 and https://doi.org/10.1038/s41590-022-01129-x") |
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interface.launch() |
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if __name__ == '__main__': |
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gradio() |
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