Harnessing large language models (LLMs) for candidate gene prioritization and selection

被引:9
|
作者
Toufiq, Mohammed [1 ]
Rinchai, Darawan [2 ]
Bettacchioli, Eleonore [3 ,4 ]
Kabeer, Basirudeen Syed Ahamed [5 ]
Khan, Taushif [1 ]
Subba, Bishesh [1 ]
White, Olivia [1 ]
Yurieva, Marina [1 ]
George, Joshy [1 ]
Jourde-Chiche, Noemie [6 ]
Chiche, Laurent [7 ]
Palucka, Karolina [1 ]
Chaussabel, Damien [1 ]
机构
[1] Jackson Lab Genom Med, Farmington, CT 06032 USA
[2] Rockefeller Univ, New York, NY USA
[3] Univ Bretagne Occidentale, INSERM UMR1227, Lymphocytes B & Autoimmunite, Brest, France
[4] CHU Brest, Serv Rhumatol, Brest, France
[5] Sidra Med, Doha, Qatar
[6] Hop La Conception, Serv Nephrol, Marseille, France
[7] Hop Europeen, Serv Med Interne, Marseille, France
关键词
Transcriptomics; Erythroid cells; Feature selection; Large language models; Generative artificial intelligence; CARBONIC-ANHYDRASE II; HUMAN RED-CELLS; ERYTHROID-CELLS; EXPRESSION; CANCER; FERROCHELATASE; TRANSPORT; SYNTHASE; BICARBONATE; INHIBITORS;
D O I
10.1186/s12967-023-04576-8
中图分类号
R-3 [医学研究方法]; R3 [基础医学];
学科分类号
1001 ;
摘要
BackgroundFeature selection is a critical step for translating advances afforded by systems-scale molecular profiling into actionable clinical insights. While data-driven methods are commonly utilized for selecting candidate genes, knowledge-driven methods must contend with the challenge of efficiently sifting through extensive volumes of biomedical information. This work aimed to assess the utility of large language models (LLMs) for knowledge-driven gene prioritization and selection.MethodsIn this proof of concept, we focused on 11 blood transcriptional modules associated with an Erythroid cells signature. We evaluated four leading LLMs across multiple tasks. Next, we established a workflow leveraging LLMs. The steps consisted of: (1) Selecting one of the 11 modules; (2) Identifying functional convergences among constituent genes using the LLMs; (3) Scoring candidate genes across six criteria capturing the gene's biological and clinical relevance; (4) Prioritizing candidate genes and summarizing justifications; (5) Fact-checking justifications and identifying supporting references; (6) Selecting a top candidate gene based on validated scoring justifications; and (7) Factoring in transcriptome profiling data to finalize the selection of the top candidate gene.ResultsOf the four LLMs evaluated, OpenAI's GPT-4 and Anthropic's Claude demonstrated the best performance and were chosen for the implementation of the candidate gene prioritization and selection workflow. This workflow was run in parallel for each of the 11 erythroid cell modules by participants in a data mining workshop. Module M9.2 served as an illustrative use case. The 30 candidate genes forming this module were assessed, and the top five scoring genes were identified as BCL2L1, ALAS2, SLC4A1, CA1, and FECH. Researchers carefully fact-checked the summarized scoring justifications, after which the LLMs were prompted to select a top candidate based on this information. GPT-4 initially chose BCL2L1, while Claude selected ALAS2. When transcriptional profiling data from three reference datasets were provided for additional context, GPT-4 revised its initial choice to ALAS2, whereas Claude reaffirmed its original selection for this module.ConclusionsTaken together, our findings highlight the ability of LLMs to prioritize candidate genes with minimal human intervention. This suggests the potential of this technology to boost productivity, especially for tasks that require leveraging extensive biomedical knowledge.
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页数:33
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