Interpretable artificial intelligence to optimise use of imatinib after resection in patients with localised gastrointestinal stromal tumours: an observational cohort study.

IF 41.6 1区 医学 Q1 ONCOLOGY Lancet Oncology Pub Date : 2024-08-01 Epub Date: 2024-07-05 DOI:10.1016/S1470-2045(24)00259-6
Dimitris Bertsimas, Georgios Antonios Margonis, Suleeporn Sujichantararat, Angelos Koulouras, Yu Ma, Cristina R Antonescu, Murray F Brennan, Javier Martín-Broto, Seehanah Tang, Piotr Rutkowski, Martin E Kreis, Katharina Beyer, Jane Wang, Elzbieta Bylina, Pawel Sobczuk, Antonio Gutierrez, Bhumika Jadeja, William D Tap, Ping Chi, Samuel Singer
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引用次数: 0

Abstract

Background: Current guidelines recommend use of adjuvant imatinib therapy for many patients with gastrointestinal stromal tumours (GISTs); however, its optimal treatment duration is unknown and some patient groups do not benefit from the therapy. We aimed to apply state-of-the-art, interpretable artificial intelligence (ie, predictions or prescription logic that can be easily understood) methods on real-world data to establish which groups of patients with GISTs should receive adjuvant imatinib, its optimal treatment duration, and the benefits conferred by this therapy.

Methods: In this observational cohort study, we considered for inclusion all patients who underwent resection of primary, non-metastatic GISTs at the Memorial Sloan Kettering Cancer Center (MSKCC; New York, NY, USA) between Oct 1, 1982, and Dec 31, 2017, and who were classified as intermediate or high risk according to the Armed Forces Institute of Pathology Miettinen criteria and had complete follow-up data with no missing entries. A counterfactual random forest model, which used predictors of recurrence (mitotic count, tumour size, and tumour site) and imatinib duration to infer the probability of recurrence at 7 years for a given patient under each duration of imatinib treatment, was trained in the MSKCC cohort. Optimal policy trees (OPTs), a state-of-the-art interpretable AI-based method, were used to read the counterfactual random forest model by training a decision tree with the counterfactual predictions. The OPT recommendations were externally validated in two cohorts of patients from Poland (the Polish Clinical GIST Registry), who underwent GIST resection between Dec 1, 1981, and Dec 31, 2011, and from Spain (the Spanish Group for Research in Sarcomas), who underwent resection between Oct 1, 1987, and Jan 30, 2011.

Findings: Among 1007 patients who underwent GIST surgery in MSKCC, 117 were included in the internal cohort; for the external cohorts, the Polish cohort comprised 363 patients and the Spanish cohort comprised 239 patients. The OPT did not recommend imatinib for patients with GISTs of gastric origin measuring less than 15·9 cm with a mitotic count of less than 11·5 mitoses per 5 mm2 or for those with small GISTs (<5·4 cm) of any site with a count of less than 11·5 mitoses per 5 mm2. In this cohort, the OPT cutoffs had a sensitivity of 92·7% (95% CI 82·4-98·0) and a specificity of 33·9% (22·3-47·0). The application of these cutoffs in the two external cohorts would have spared 38 (29%) of 131 patients in the Spanish cohort and 44 (35%) of 126 patients in the Polish cohort from unnecessary treatment with imatinib. Meanwhile, the risk of undertreating patients in these cohorts was minimal (sensitivity 95·4% [95% CI 89·5-98·5] in the Spanish cohort and 92·4% [88·3-95·4] in the Polish cohort). The OPT tested 33 different durations of imatinib treatment (<5 years) and found that 5 years of treatment conferred the most benefit.

Interpretation: If the identified patient subgroups were applied in clinical practice, as many as a third of the current cohort of candidates who do not benefit from adjuvant imatinib would be encouraged to not receive imatinib, subsequently avoiding unnecessary toxicity on patients and financial strain on health-care systems. Our finding that 5 years is the optimal duration of imatinib treatment could be the best source of evidence to inform clinical practice until 2028, when a randomised controlled trial with the same aims is expected to report its findings.

Funding: National Cancer Institute.

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用可解释的人工智能优化局部胃肠道间质瘤患者切除术后伊马替尼的使用:一项观察性队列研究。
背景:现行指南建议对许多胃肠道间质瘤(GIST)患者使用伊马替尼辅助治疗;然而,伊马替尼的最佳治疗时间尚不清楚,而且有些患者群体无法从治疗中获益。我们的目标是在真实世界的数据中应用最先进的、可解释的人工智能(即易于理解的预测或处方逻辑)方法,以确定哪些胃肠道间质瘤患者群体应接受伊马替尼辅助治疗、最佳治疗时间以及该疗法带来的益处:在这项观察性队列研究中,我们将1982年10月1日至2017年12月31日期间在纪念斯隆-凯特琳癌症中心(MSKCC;美国纽约州纽约市)接受原发性、非转移性GIST切除术的所有患者纳入研究对象,这些患者根据武装部队病理研究所的Miettinen标准被归类为中危或高危患者,并且拥有完整的随访数据,没有缺失条目。在MSKCC队列中训练了一个反事实随机森林模型,该模型使用复发预测因子(有丝分裂计数、肿瘤大小和肿瘤部位)和伊马替尼疗程来推断特定患者在伊马替尼每种疗程下7年的复发概率。最优策略树(OPT)是一种基于人工智能的最先进的可解释方法,通过使用反事实预测训练决策树来读取反事实随机森林模型。OPT建议在波兰(波兰GIST临床登记处)和西班牙(西班牙肉瘤研究小组)两组患者中进行了外部验证,前者在1981年12月1日至2011年12月31日期间接受了GIST切除术,后者在1987年10月1日至2011年1月30日期间接受了切除术:在MSKCC接受GIST手术的1007名患者中,有117人被纳入内部队列;在外部队列中,波兰队列包括363名患者,西班牙队列包括239名患者。OPT 不建议胃源性 GIST 患者使用伊马替尼,这些 GIST 的尺寸小于 15-9 厘米,有丝分裂计数小于 11-5 个/5 平方毫米,或者小 GIST 患者也不建议使用伊马替尼(2)。 在该队列中,OPT 临界值的敏感性为 92-7%(95% CI 82-4-98-0),特异性为 33-9%(22-3-47-0)。在两个外部队列中应用这些临界值,可使西班牙队列中 131 例患者中的 38 例(29%)和波兰队列中 126 例患者中的 44 例(35%)免于接受不必要的伊马替尼治疗。同时,这些队列中患者治疗不足的风险极低(西班牙队列的敏感性为 95-4% [95% CI 89-5-98-5],波兰队列的敏感性为 92-4% [88-3-95-4])。OPT测试了33种不同的伊马替尼治疗持续时间(释义:如果已确定的患者亚群在治疗过程中存在不同的持续时间,那么OPT测试的结果也会不同):如果将已确定的患者亚组应用于临床实践,那么目前多达三分之一的无法从伊马替尼辅助治疗中获益的候选患者将被鼓励不接受伊马替尼治疗,从而避免对患者造成不必要的毒性和对医疗系统造成经济压力。我们的研究结果表明,5 年是伊马替尼治疗的最佳疗程,在 2028 年之前,这可能是指导临床实践的最佳证据来源:国家癌症研究所
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来源期刊
Lancet Oncology
Lancet Oncology 医学-肿瘤学
CiteScore
62.10
自引率
1.00%
发文量
913
审稿时长
3-8 weeks
期刊介绍: The Lancet Oncology is a trusted international journal that addresses various topics in clinical practice, health policy, and global oncology. It covers a wide range of cancer types, including breast, endocrine system, gastrointestinal, genitourinary, gynaecological, haematological, head and neck, neurooncology, paediatric, thoracic, sarcoma, and skin cancers. Additionally, it includes articles on epidemiology, cancer prevention and control, supportive care, imaging, and health-care systems. The journal has an Impact Factor of 51.1, making it the leading clinical oncology research journal worldwide. It publishes different types of articles, such as Articles, Reviews, Policy Reviews, Personal Views, Clinical Pictures, Comments, Correspondence, News, and Perspectives. The Lancet Oncology also collaborates with societies, governments, NGOs, and academic centers to publish Series and Commissions that aim to drive positive changes in clinical practice and health policy in areas of global oncology that require attention.
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