SYNERGY-AI: Artificial intelligence-based precision oncology clinical trial matching and registry.

S. Kurnaz, A. Loaiza-Bonilla
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引用次数: 0

Abstract

22 Background: Precision oncology encompasses the implementation of high level of evidence disease-specific and biomarker-driven diagnostic and treatment recommendations for optimized cancer care. Artificial Intelligence (AI), telemedicine and value-based care may optimize clinical trial enrollment (CTE) and overall cost-benefit. This ongoing, international registry for cancer pts evaluates the feasibility and clinical utility of an AI-based precision oncology clinical trial matching tool, powered by a virtual tumor boards (VTB) program, and its clinical impact on pts with advanced cancer to facilitate CTE, as well as the financial impact, and potential outcomes of the intervention. Methods: The SYNERGY-AI Registry is an international prospective, observational cohort study of eligible adult and pediatric pts with advanced solid and hematological malignancies, for whom the decision to consider CTE has already been made by their primary providers (PP). Using a proprietary application programming interface (API) linked to existing electronic health records (EHR) platforms, individual clinical data is extracted, analyzed and matched to a parametric database of existing institutional and non-institutional CTs. Machine learning algorithms allow for dynamic matching based on CT allocation and availability for optimized matching. Patients voluntarily enroll into registry, which is non-interventional with no protocol-mandated tests/procedures—all treatment decisions are made at the discretion of PP in consultation with their pts, based on the AI CT matching report, and VTB support. CTE will be assessed on variables including biomarkers, barriers to enrollment. Study duration anticipated as ~36 mo. The impact time to initiation of CTE on PFS and OS will be estimated by Kaplan-Meier and Cox multivariable survival analysis. Enrollment is ongoing, with a target of ≥ 1500 patients. Key inclusion criteria: Pts with solid and hematological malignancies; Pts cancer-related biomarkers. Key exclusion: ECOG PS > 2; abnormal organ function; hospice. Results: To be presented. Conclusions: AI-based, patient-driven CTE is feasible, highly effective and paradigm-changing. Clinical trial information: NCT03452774.
SYNERGY-AI:基于人工智能的精确肿瘤学临床试验匹配和注册。
22背景:精准肿瘤学包括实施高水平证据的疾病特异性和生物标志物驱动的诊断和治疗建议,以优化癌症护理。人工智能(AI)、远程医疗和基于价值的护理可以优化临床试验注册(CTE)和总体成本效益。这项正在进行的癌症患者国际注册评估了由虚拟肿瘤委员会(VTB)计划提供支持的基于人工智能的精确肿瘤学临床试验匹配工具的可行性和临床实用性,以及其对晚期癌症患者的临床影响,以促进CTE,以及干预的财务影响和潜在结果。方法:SYNERGY-AI注册是一项国际前瞻性、观察性队列研究,针对符合条件的患有晚期实体瘤和血液系统恶性肿瘤的成人和儿童患者,他们的主要提供者(PP)已经决定考虑CTE。使用与现有电子健康记录(EHR)平台链接的专有应用程序编程接口(API),提取、分析个体临床数据,并将其与现有机构和非机构CT的参数数据库进行匹配。机器学习算法允许基于CT分配的动态匹配和优化匹配的可用性。患者自愿登记,这是非干预性的,没有协议规定的测试/程序——所有治疗决定都由PP根据AI CT匹配报告和VTB支持,在与患者协商后自行决定。CTE将根据包括生物标志物、注册障碍在内的变量进行评估。研究持续时间预计约为36个月。CTE开始对PFS和OS的影响时间将通过Kaplan-Meier和Cox多变量生存分析进行估计。招募工作正在进行中,目标是≥1500名患者。关键纳入标准:患有实体恶性肿瘤和血液系统恶性肿瘤的Pts;Pts癌症相关生物标志物。密钥排除:ECOG PS>2;器官功能异常;临终关怀。结果:待介绍。结论:基于人工智能、患者驱动的CTE是可行的、高效的,可以改变范式。临床试验信息:NCT03452774。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
自引率
0.00%
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0
审稿时长
20 weeks
期刊介绍: The Journal of Global Oncology (JGO) is an online only, open access journal focused on cancer care, research and care delivery issues unique to countries and settings with limited healthcare resources. JGO aims to provide a home for high-quality literature that fulfills a growing need for content describing the array of challenges health care professionals in resource-constrained settings face. Article types include original reports, review articles, commentaries, correspondence/replies, special articles and editorials.
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