Bove Samantha, Arezzo Francesca, Cormio Gennaro, Silvestris Erica, Cafforio Alessia, Comes Maria Colomba, Fanizzi Annarita, Accogli Giuseppe, Cazzato Gerardo, De Nunzio Giorgio, Maiorano Brigida, Naglieri Emanuele, Lupo Andrea, Vitale Elsa, Loizzi Vera, Massafra Raffaella
Laboratorio di Biostatistica e Bioinformatica, Fisica Sanitaria, I.R.C.C.S. Istituto Tumori "Giovanni Paolo II", Bari, Italy.
Ginecologia Oncologica, I.R.C.C.S. Istituto Tumori "Giovanni Paolo II", Bari, Italy.
Front Artif Intell. 2024 Dec 6;7:1388188. doi: 10.3389/frai.2024.1388188. eCollection 2024.
Endometrial carcinosarcoma is a rare, aggressive high-grade endometrial cancer, accounting for about 5% of all uterine cancers and 15% of deaths from uterine cancers. The treatment can be complex, and the prognosis is poor. Its increasing incidence underscores the urgent requirement for personalized approaches in managing such challenging diseases.
In this work, we designed an explainable machine learning approach to predict recurrence-free survival in patients affected by endometrial carcinosarcoma. For this purpose, we exploited the predictive power of clinical and histopathological data, as well as chemotherapy and surgical information collected for a cohort of 80 patients monitored over time. Among these patients, 32.5% have experienced the appearance of a recurrence.
The designed model was able to well describe the observed sequence of events, providing a reliable ranking of the survival times based on the individual risk scores, and achieving a C-index equals to 70.00% (95% CI, 59.38-84.74).
Accordingly, machine learning methods could support clinicians in discriminating between endometrial carcinosarcoma patients at low-risk or high-risk of recurrence, in a non-invasive and inexpensive way. To the best of our knowledge, this is the first study proposing a preliminary approach addressing this task.
子宫内膜癌肉瘤是一种罕见的、侵袭性的高级别子宫内膜癌,约占所有子宫癌的5%,占子宫癌死亡病例的15%。其治疗可能较为复杂,预后较差。其发病率不断上升,凸显了针对此类具有挑战性疾病采用个性化治疗方法的迫切需求。
在本研究中,我们设计了一种可解释的机器学习方法,用于预测子宫内膜癌肉瘤患者的无复发生存期。为此,我们利用了临床和组织病理学数据的预测能力,以及为一组80名长期监测患者收集的化疗和手术信息。在这些患者中,32.5%出现了复发。
所设计的模型能够很好地描述观察到的事件序列,根据个体风险评分提供可靠的生存时间排名,C指数达到70.00%(95%CI,59.38 - 84.74)。
因此,机器学习方法可以以非侵入性且低成本的方式支持临床医生区分低复发风险或高复发风险的子宫内膜癌肉瘤患者。据我们所知,这是第一项提出解决该任务初步方法的研究。