The Combination of Clinical, Dose-Related and Imaging Features Helps Predict Radiation-Induced Normal-Tissue Toxicity in Lung-cancer Patients -- An in-silico Trial Using Machine Learning Techniques

G. Nalbantov, A. Dekker, D. Ruysscher, P. Lambin, E. Smirnov
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引用次数: 2

Abstract

The amount of delivered radiation dose to the tumor in non-small cell lung cancer (NSCLC) patients is limited by the negative side effects on normal tissues. The most dose-limiting factor in radiotherapy is the radiation-induced lung toxicity (RILT). RILT is generally measured semi-quantitatively, by a dyspnea, or shortness-of-breath, score. In general, about 20-30% of patients develop RILT several months after treatment, and in about 70% of the patients the delivered dose is insufficient to control the tumor growth. Ideally, if the RILT score would be known in advance, then the dose treatment plan for the low-toxicity-risk patients could be adjusted so that higher dose is delivered to the tumor to better control it. A number of possible predictors of RILT have been proposed in the literature, including dose-related and clinical/demographic patient characteristics available prior to radiotherapy. In addition, the use of imaging features -- which are noninvasive in nature - has been gaining momentum. Thus, anatomic as well as functional/metabolic information from CT and PET scanner images respectively are used in daily clinical practice, which provide further information about the status of a patient. In this study we assessed whether machine learning techniques can successfully be applied to predict post-radiation lung damage, proxied by dyspnea score, based on clinical, dose-related (dosimetric) and image features. Our dataset included 78 NSCLC patients. The patients were divided into two groups: no-deterioration-of-dyspnea, and deterioration-of-dyspnea patients. Several machine-learning binary classifiers were applied to discriminate the two groups. The results, evaluated using the area under the ROC curve in a cross-validation procedure, are highly promising. This outcome could open the possibility to deliver better, individualized dose-treatment plans for lung cancer patients and help the overall clinical decision making (treatment) process.
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临床、剂量相关和影像学特征的结合有助于预测肺癌患者辐射诱导的正常组织毒性——一项使用机器学习技术的计算机试验
非小细胞肺癌(NSCLC)患者的肿瘤放射剂量受到对正常组织的负面影响的限制。放射治疗中最大的剂量限制因素是辐射诱发的肺毒性(RILT)。RILT通常是半定量测量,通过呼吸困难或呼吸短促评分。一般来说,约20-30%的患者在治疗几个月后出现RILT,约70%的患者给予的剂量不足以控制肿瘤生长。理想情况下,如果提前知道RILT评分,就可以调整低毒性风险患者的剂量治疗计划,向肿瘤提供更高的剂量,更好地控制肿瘤。文献中已经提出了许多可能的RILT预测因素,包括放射治疗前可用的剂量相关和临床/人口统计学患者特征。此外,使用非侵入性的成像特征已经获得了动力。因此,在日常临床实践中分别使用CT和PET扫描图像的解剖以及功能/代谢信息,这提供了关于患者状态的进一步信息。在这项研究中,我们评估了机器学习技术是否可以成功地应用于预测辐射后肺损伤,以呼吸困难评分为代表,基于临床,剂量相关(剂量学)和图像特征。我们的数据集包括78名非小细胞肺癌患者。患者分为两组:无呼吸困难恶化组和呼吸困难恶化组。使用几个机器学习二元分类器来区分两组。结果,在交叉验证程序中使用ROC曲线下的面积进行评估,是非常有希望的。这一结果可能为肺癌患者提供更好的、个性化的剂量治疗方案,并有助于整体临床决策(治疗)过程。
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