Objective: Reliable tools to predict moyamoya disease (MMD) patients at risk for hemorrhage could have significant value. The aim of this paper is to develop three machine learning classification algorithms to predict hemorrhage in moyamoya disease. Methods: Clinical data of consecutive MMD patients who were admitted to our hospital between 2009 and 2015 were reviewed. Demographics, clinical, radiographic data were analyzed to develop artificial neural network (ANN), support vector machine (SVM), and random forest models. Results: We extracted 33 parameters, including 11 demographic and 22 radiographic features as input for model development. Of all compared classification results, ANN achieved the highest overall accuracy of 75.7% (95% CI, 68.6%-82.8%), followed by SVM with 69.2% (95% CI, 56.9%-81.5%) and random forest with 70.0% (95% CI, 57.0%-83.0%). Conclusions: The proposed ANN framework can be a potential effective tool to predict the possibility of hemorrhage among adult MMD patients based on clinical information and radiographic features.
翻译:目标:预测有出血风险的Moyamoya疾病(MMD)患者的可靠工具可能具有重大价值。本文件的目的是开发三种机器学习分类算法,以预测Moyamoya疾病出血。方法:对2009年至2015年期间连续住院的MMD病人临床数据进行了审查;对人口、临床、放射数据进行了分析,以开发人工神经网络(ANN)、支持矢量机(SVM)和随机森林模型。结果:我们提取了33个参数,包括11个人口和22个放射特征,作为模型开发的投入。在所有比较分类结果中,ANN达到75.7%(95% CI,68.6%-82.88%)的最高总体准确率,其次是SVM,69.2%(95% CI,56.9%-81.5%)和70.00%(95% CI,57.0%-83.0%)的随机森林。结论:拟议的ANN框架可以成为根据临床信息和放射特征预测成人MD病人出血可能性的有效工具。