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Development of machine learning-based clinical decision support system for hepatocellular carcinoma

机译:基于机器学习的肝细胞癌临床决策支持系统的开发

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There is a significant discrepancy between the actual choice for initial treatment option for hepatocellular carcinoma (HCC) and recommendations from the currently used BCLC staging system. We develop a machine learning-based clinical decision support system (CDSS) for recommending initial treatment option in HCC and predicting overall survival (OS). From hospital records of 1,021 consecutive patients with HCC treated at a single centre in Korea between January 2010 and October 2010, we collected information on 61 pretreatment variables, initial treatment, and survival status. Twenty pretreatment key variables were finally selected. We developed the CDSS from the derivation set (N?=?813) using random forest method and validated it in the validation set (N?=?208). Among the 1,021 patients (mean age: 56.9?years), 81.8% were male and 77.0% had positive hepatitis B BCLC stages 0, A, B, C, and D were observed in 13.4%, 26.0%, 18.0%, 36.6%, and 6.3% of patients, respectively. The six multi-step classifier model was developed for treatment decision in a hierarchical manner, and showed good performance with 81.0% of accuracy for radiofrequency ablation (RFA) or resection versus not, 88.4% for RFA versus resection, and 76.8% for TACE or not. We also developed seven survival prediction models for each treatment option. Our newly developed HCC-CDSS model showed good performance in terms of treatment recommendation and OS prediction and may be used as a guidance in deciding the initial treatment option for HCC.
机译:肝细胞癌(HCC)初始治疗选择的实际选择与目前使用的BCCRC分期系统的建议之间存在显着差异。我们开发了一种基于机器学习的临床决策支持系统(CDS),用于在HCC中推荐初始治疗选项并预测整体生存(OS)。从2010年1月至2010年1月在韩国的单一中心处理的1,021名连续患有HCC患者的患者,我们收集了关于61个预处理变量,初始治疗和生存状态的信息。最终选择二十个预处理密钥变量。我们使用随机森林方法从派生集(n?=α813)中开发了CDSS,并在验证集中验证了它(n?=?208)。在1,021名患者中(平均:56.9?岁),81.8%是男性,77.0%具有阳性乙型肝炎BCLC阶段0,A,B,C和D在13.4%,26.0%,18.0%,36.6%和6.3%的患者分别。六种多步分类模型以分层方式开发用于治疗决策,并且表现出良好的性能,额外的射频消融(RFA)或切除术的精度为81.0%,RFA与切除的88.4%,TACE的76.8%不是。我们还开发了每个治疗选项的七种生存预测模型。我们的新开发的HCC-CDSS模型在治疗建议和OS预测方面表现出良好的性能,并且可以用作决定HCC初始治疗选择的指导。

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