De Bari Berardino, Vallati Mauro, Gatta Roberto, Lestrade Laëtitia, Manfrida Stefania, Carrie Christian, Valentini Vincenzo
Radiation Oncology Department, Centre Hospitalier Universitaire Vaudois-CHUV, Lausanne, Switzerland.
University of Huddersfield, School of Computing and Engineering, Huddersfield, UK.
Oncotarget. 2016 Jul 21;8(65):108509-108521. doi: 10.18632/oncotarget.10749. eCollection 2017 Dec 12.
The role of prophylactic inguinal irradiation (PII) in the treatment of anal cancer patients is controversial. We developped an innovative algorithm based on the Machine Learning (ML) allowing the tailoring of the prescription of PII.
Once verified on the independent testing set, J48 showed the better performances, with specificity, sensitivity, and accuracy rates in predicting relapsing patients of 86.4%, 50.0% and 83.1% respectively (vs 36.5%, 90.4% and 80.25%, respectively, for LR).
We classified 194 anal cancer patients with Logistic Regression (LR) and other 3 ML techniques based on decision trees (J48, Random Tree and Random Forest), using a large set of clinical and therapeutic variables. We tested obtained ML algorithms on an independent testing set of 65 anal cancer patients. TRIPOD (Transparent Reporting of a multivariable prediction model for Individual Prognosis or Diagnosis) methodology was used for the development, the Quality Assurance and the description of the experimental procedures.
In an internationally approved quality assurance framework, ML seems promising in predicting the outcome of patients that would benefit or not of the PII. Once confirmed in larger and/or multi-centric databases, ML could support the physician in tailoring the treatment and in deciding if deliver or not the PII.
预防性腹股沟照射(PII)在肛门癌患者治疗中的作用存在争议。我们开发了一种基于机器学习(ML)的创新算法,可实现PII处方的个性化定制。
在独立测试集上验证后,J48表现更佳,预测复发患者的特异性、敏感性和准确率分别为86.4%、50.0%和83.1%(而逻辑回归(LR)分别为36.5%、90.4%和80.25%)。
我们使用大量临床和治疗变量,通过逻辑回归(LR)以及基于决策树的其他三种机器学习技术(J48、随机树和随机森林)对194例肛门癌患者进行分类。我们在65例肛门癌患者的独立测试集上测试了得到的机器学习算法。使用TRIPOD(个体预后或诊断多变量预测模型的透明报告)方法进行实验程序的开发、质量保证和描述。
在国际认可的质量保证框架下,机器学习在预测哪些患者会从预防性腹股沟照射中获益或无获益方面似乎很有前景。一旦在更大和/或多中心数据库中得到证实,机器学习可以支持医生进行个性化治疗,并决定是否进行预防性腹股沟照射。