LITIS - QUANTIF, University of Rouen, 22, boulevard Gambetta, 76000 Rouen, France; DOSISOFT, 45/47, avenue Carnot, 94230 Cachan, France.
LITIS - QUANTIF, University of Rouen, 22, boulevard Gambetta, 76000 Rouen, France.
Comput Med Imaging Graph. 2017 Sep;60:42-49. doi: 10.1016/j.compmedimag.2016.12.002. Epub 2016 Dec 28.
The outcome prediction of patients can greatly help to personalize cancer treatment. A large amount of quantitative features (clinical exams, imaging, …) are potentially useful to assess the patient outcome. The challenge is to choose the most predictive subset of features. In this paper, we propose a new feature selection strategy called GARF (genetic algorithm based on random forest) extracted from positron emission tomography (PET) images and clinical data. The most relevant features, predictive of the therapeutic response or which are prognoses of the patient survival 3 years after the end of treatment, were selected using GARF on a cohort of 65 patients with a local advanced oesophageal cancer eligible for chemo-radiation therapy. The most relevant predictive results were obtained with a subset of 9 features leading to a random forest misclassification rate of 18±4% and an areas under the of receiver operating characteristic (ROC) curves (AUC) of 0.823±0.032. The most relevant prognostic results were obtained with 8 features leading to an error rate of 20±7% and an AUC of 0.750±0.108. Both predictive and prognostic results show better performances using GARF than using 4 other studied methods.
患者预后预测可以极大地帮助癌症治疗个体化。大量的定量特征(临床检查、影像学等)对于评估患者预后可能是有用的。挑战在于选择最具预测性的特征子集。在本文中,我们提出了一种新的特征选择策略,称为 GARF(基于随机森林的遗传算法),它从正电子发射断层扫描(PET)图像和临床数据中提取。在 65 名局部晚期食管癌患者队列中,使用 GARF 选择了与治疗反应相关的最相关特征,这些特征与患者治疗结束后 3 年的生存预后相关。使用 9 个特征的子集获得了最相关的预测结果,导致随机森林错误分类率为 18±4%,接收者操作特征曲线(ROC)下面积(AUC)为 0.823±0.032。使用 8 个特征获得了最相关的预后结果,导致错误率为 20±7%,AUC 为 0.750±0.108。与其他 4 种研究方法相比,使用 GARF 可获得更好的预测和预后结果。