Akcay Melek, Etiz Durmus, Celik Ozer, Ozen Alaattin
Department of Radiation Oncology, Medical Faculty of Osmangazi University, Eskişehir, Turkey.
Department of Mathematics-Computer, Eskisehir Osmangazi University, Eskişehir, Turkey.
Technol Cancer Res Treat. 2020 Jan-Dec;19:1533033820909829. doi: 10.1177/1533033820909829.
Although the prognosis of nasopharyngeal cancer largely depends on a classification based on the tumor-lymph node metastasis staging system, patients at the same stage may have different clinical outcomes. This study aimed to evaluate the survival prognosis of nasopharyngeal cancer using machine learning.
Original, retrospective.
A total of 72 patients with a diagnosis of nasopharyngeal cancer who received radiotherapy ± chemotherapy were included in the study. The contribution of patient, tumor, and treatment characteristics to the survival prognosis was evaluated by machine learning using the following techniques: logistic regression, artificial neural network, XGBoost, support-vector clustering, random forest, and Gaussian Naive Bayes.
In the analysis of the data set, correlation analysis, and binary logistic regression analyses were applied. Of the 18 independent variables, 10 were found to be effective in predicting nasopharyngeal cancer-related mortality: age, weight loss, initial neutrophil/lymphocyte ratio, initial lactate dehydrogenase, initial hemoglobin, radiotherapy duration, tumor diameter, number of concurrent chemotherapy cycles, and T and N stages. Gaussian Naive Bayes was determined as the best algorithm to evaluate the prognosis of machine learning techniques (accuracy rate: 88%, area under the curve score: 0.91, confidence interval: 0.68-1, sensitivity: 75%, specificity: 100%).
Many factors affect prognosis in cancer, and machine learning algorithms can be used to determine which factors have a greater effect on survival prognosis, which then allows further research into these factors. In the current study, Gaussian Naive Bayes was identified as the best algorithm for the evaluation of prognosis of nasopharyngeal cancer.
尽管鼻咽癌的预后很大程度上取决于基于肿瘤-淋巴结转移分期系统的分类,但处于同一阶段的患者可能有不同的临床结局。本研究旨在使用机器学习评估鼻咽癌的生存预后。
原始的回顾性研究。
本研究共纳入72例诊断为鼻咽癌并接受放疗±化疗的患者。通过机器学习使用以下技术评估患者、肿瘤和治疗特征对生存预后的影响:逻辑回归、人工神经网络、XGBoost、支持向量聚类、随机森林和高斯朴素贝叶斯。
在数据集分析中,应用了相关性分析和二元逻辑回归分析。在18个自变量中,发现10个对预测鼻咽癌相关死亡率有效:年龄、体重减轻、初始中性粒细胞/淋巴细胞比值、初始乳酸脱氢酶、初始血红蛋白、放疗持续时间、肿瘤直径、同步化疗周期数以及T和N分期。高斯朴素贝叶斯被确定为评估机器学习技术预后的最佳算法(准确率:88%,曲线下面积得分:0.91,置信区间:0.68 - 1,灵敏度:75%,特异性:100%)。
许多因素影响癌症预后,机器学习算法可用于确定哪些因素对生存预后有更大影响,进而可对这些因素进行进一步研究。在本研究中,高斯朴素贝叶斯被确定为评估鼻咽癌预后的最佳算法。