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Machine Learning Approaches for Predicting Radiation Therapy Outcomes: A Clinician's Perspective

机译:机器学习方法可预测放射治疗的结果:临床医生的观点

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Radiation oncology has always been deeply rooted in modeling, from the early days of isoeffect curves to the contemporary Quantitative Analysis of Normal Tissue Effects in the Clinic (QUANTEC) initiative. In recent years, medical modeling for both prognostic and therapeutic purposes has exploded thanks to increasing availability of electronic data and genomics. One promising direction that medical modeling is moving toward is adopting the same machine learning methods used by companies such as Google and Facebook to combat disease. Broadly defined, machine learning is a branch of computer science that deals with making predictions from complex data through statistical models. These methods serve to uncover patterns in data and are actively used in areas such as speech recognition, handwriting recognition, face recognition, "spam" filtering (junk email), and targeted advertising. Although multiple radiation oncology research groups have shown the value of applied machine learning (ML), clinical adoption has been slow due to the high barrier to understanding these complex models by clinicians. Here, we present a review of the use of ML to predict radiation therapy outcomes from the clinician's point of view with the hope that it lowers the "barrier to entry" for those without formal training in ML. We begin by describing 7 principles that one should consider when evaluating (or creating) an ML model in radiation oncology. We next introduce 3 popular ML methods-logistic regression (LR), support vector machine (SVM), and artificial neural network (ANN)-and critique 3 seminal papers in the context of these principles. Although current studies are in exploratory stages, the overall methodology has progressively matured, and the field is ready for larger-scale further investigation. (C) 2015 Elsevier Inc. All rights reserved.
机译:放射肿瘤学一直深深植根于建模,从早期的等效效应曲线到当代临床中正常组织效应的定量分析(QUANTEC)计划。近年来,由于电子数据和基因组学的可用性日益提高,用于预后和治疗目的的医学模型已经爆炸式增长。医学建模正朝着一个有希望的方向发展,那就是采用与Google和Facebook等公司用来对抗疾病的相同的机器学习方法。广义上讲,机器学习是计算机科学的一个分支,致力于通过统计模型对复杂数据进行预测。这些方法用于发现数据中的模式,并在诸如语音识别,手写识别,面部识别,“垃圾邮件”过滤(垃圾邮件)和有针对性的广告等领域中得到积极使用。尽管多个放射肿瘤学研究小组已经表明了应用机器学习(ML)的价值,但是由于临床医生对这些复杂模型的理解存在很高的障碍,因此临床应用进展缓慢。在这里,我们从临床医生的角度对使用ML预测放射治疗结果进行了综述,希望它可以降低未经ML正规培训的患者的“进入障碍”。我们从描述在评估(或创建)放射肿瘤学中的ML模型时应考虑的7条原则开始。接下来,我们将介绍3种流行的ML方法-Logistic回归(LR),支持向量机(SVM)和人工神经网络(ANN)-并在这些原理的背景下对3项重要论文进行评论。尽管当前的研究处于探索阶段,但总体方法已逐渐成熟,该领域已准备好进行大规模的进一步研究。 (C)2015 Elsevier Inc.保留所有权利。

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