Automatic Detection of Cognitive Impairment in Patients With White Matter Hyperintensity Using Deep Learning and Radiomics.

Junbang Feng, Xingyan Le, Li Li, Lin Tang, Yuwei Xia, Feng Shi, Yi Guo, Yueqin Zhou, Chuanming Li
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Abstract

White matter hyperintensity (WMH) is associated with cognitive impairment. In this study, 79 patients with WMH from hospital 1 were randomly divided into a training set (62 patients) and an internal validation set (17 patients). In addition, 29 WMH patients from hospital 2 were used as an external validation set. Cognitive status was determined based on neuropsychological assessment results. A deep learning convolutional neural network of VB-Nets was used to automatically identify and segment whole-brain subregions and WMH. The PyRadiomics package in Python was used to automatically extract radiomic features from the WMH and bilateral hippocampi. Delong tests revealed that the random forest model based on combined features had the best performance for the detection of cognitive impairment in WMH patients, with an AUC of 0.900 in the external validation set. Our results provide clinical doctors with a reliable tool for the early diagnosis of cognitive impairment in WMH patients.

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利用深度学习和放射组学自动检测白质高强度患者的认知障碍。
白质高强度(WMH)与认知障碍有关。本研究选取第一医院的79例WMH患者,随机分为训练组(62例)和内部验证组(17例)。另外,以来自第二医院的29例WMH患者作为外部验证集。根据神经心理学评估结果确定认知状态。采用VB-Nets的深度学习卷积神经网络自动识别和分割全脑子区和WMH。Python中的PyRadiomics包用于自动提取WMH和双侧海马的放射学特征。Delong检验表明,基于组合特征的随机森林模型对WMH患者认知功能障碍的检测效果最好,在外部验证集中AUC为0.900。我们的研究结果为临床医生提供了早期诊断WMH患者认知功能障碍的可靠工具。
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