自动汇总
计算机科学
标杆管理
背景(考古学)
医学诊断
个性化医疗
工具箱
数据科学
人工智能
医学
生物信息学
病理
生物
业务
古生物学
营销
程序设计语言
作者
A.K. Tripathi,Brett L. Ecker,Patrick M. Boland,Saum Ghodoussipour,Gregory Riedlinger,Subhajyoti De
标识
DOI:10.1093/jamia/ocae284
摘要
Abstract Objectives Cancer diagnosis comes as a shock to many patients, and many of them feel unprepared to handle the complexity of the life-changing event, understand technicalities of the diagnostic reports, and fully engage with the clinical team regarding the personalized clinical decision-making. Materials and Methods We develop Oncointerpreter.ai an interactive resource to offer personalized summarization of clinical cancer genomic and pathological data, and frame questions or address queries about therapeutic opportunities in near-real time via a graphical interface. It is built on the Mistral-7B and Llama-2 7B large language models trained on a local database trained using a large, curated corpus. Results We showcase its utility with case studies, where Oncointerpreter.ai extracted key clinical and molecular attributes from deidentified pathology and clinical genomics reports, summarized their contextual significance and answered queries on pertinent treatment options. Oncointerpreter also provided personalized summary of currently active clinical trials that match the patients’ disease status, their selection criteria, and geographic locations. Benchmarking and comparative assessment indicated that the model responses were generally consistent, and hallucination, ie, factually incorrect or nonsensical response was rare; treatment- and outcome related queries led to context-aware responses, and response time correlated with verbosity. Discussion The choice of model and domain-specific training also affected the response quality. Conclusion Oncointerpreter.ai can aid the existing clinical care with interactive, individualized summarization of diagnostics data to promote informed dialogs with the patients with new cancer diagnoses. Availability https://github.com/Siris2314/Oncointerpreter
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