A machine learning approach for predicting textbook outcome after cytoreductive surgery and hyperthermic intraperitoneal chemotherapy.

A. Ashraf Ganjouei, Fernanda Romero-Hernandez, J. Wang, Ahmed Hamed, Ahmed Alaa, David Bartlett, Adnan Alseidi, Mohammad Haroon Choudry, M. Adam
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Abstract

INTRODUCTION Peritoneal carcinomatosis is considered a late-stage manifestation of neoplastic diseases. Cytoreductive surgery with hyperthermic intraperitoneal chemotherapy (CRS-HIPEC) can be an effective treatment for these patients. However, the procedure is associated with significant morbidity. Our aim was to develop a machine learning model to predict the probability of achieving textbook outcome (TO) after CRS-HIPEC using only preoperatively known variables. METHODS Adult patients with peritoneal carcinomatosis and who underwent CRS-HIPEC were included from a large, single-center, prospectively maintained dataset (2001-2020). TO was defined as a hospital length of stay ≤14 days and no postoperative adverse events including any complications, reoperation, readmission, and mortality within 90 days. Four models (logistic regression, neural network, random forest, and XGBoost) were trained, validated, and a user-friendly risk calculator was then developed. RESULTS A total of 1954 CRS-HIPEC procedures for peritoneal carcinomatosis were included. Overall, 13% (n = 258) achieved TO following CRS-HIPEC procedure. XGBoost and logistic regression had the highest area under the curve (AUC) (0.76) after model optimization, followed by random forest (AUC 0.75) and neural network (AUC 0.74). The top preoperative variables associated with achieving a TO were lower peritoneal cancer index scores, not undergoing proctectomy, splenectomy, or partial colectomy and being asymptomatic from peritoneal metastases prior to surgery. CONCLUSION This is a data-driven study to predict the probability of achieving TO after CRS-HIPEC. The proposed pipeline has the potential to not only identify patients for whom surgery is not associated with prohibitive risk, but also aid surgeons in communicating this risk to patients.
预测细胞减毒手术和腹腔内热化疗后教科书结果的机器学习方法。
引言 腹膜癌肿被认为是肿瘤疾病的晚期表现。腹腔镜手术加腹腔内热化疗(CRS-HIPEC)是治疗这类患者的有效方法。然而,该手术的发病率很高。我们的目的是开发一种机器学习模型,仅利用术前已知变量预测 CRS-HIPEC 术后实现教科书结局(TO)的概率。方法从一个大型单中心前瞻性维护数据集(2001-2020 年)中纳入了接受 CRS-HIPEC 的腹膜癌变成人患者。TO的定义是住院时间少于14天,90天内无术后不良事件,包括任何并发症、再次手术、再次入院和死亡。对四个模型(逻辑回归、神经网络、随机森林和 XGBoost)进行了训练和验证,然后开发了一个用户友好型风险计算器。总体而言,13%(n = 258)的患者在接受 CRS-HIPEC 手术后获得了 TO。模型优化后,XGBoost 和逻辑回归的曲线下面积(AUC)最高(0.76),其次是随机森林(AUC 0.75)和神经网络(AUC 0.74)。与实现 TO 相关的最主要术前变量是腹膜癌指数评分较低、未进行直肠切除术、脾切除术或部分结肠切除术以及术前无腹膜转移症状。所提出的管道不仅有可能识别出手术风险不高的患者,还能帮助外科医生将这一风险传达给患者。
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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