Identification of Bipolar Disorder and Schizophrenia Based on Brain CT and Deep Learning Methods.

Meilin Li, Xingyu Hou, Wanying Yan, Dawei Wang, Ruize Yu, Xixiang Li, Fuyan Li, Jinming Chen, Lingzhen Wei, Jiahao Liu, Huaizhen Wang, Qingshi Zeng
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Abstract

With the increasing prevalence of mental illness, accurate clinical diagnosis of mental illness is crucial. Compared with MRI, CT has the advantages of wide application, low price, short scanning time, and high patient cooperation. This study aims to construct a deep learning (DL) model based on CT images to make identification of bipolar disorder (BD) and schizophrenia (SZ). A total of 506 patients (BD = 227, SZ = 279) and 179 healthy controls (HC) was collected from January 2022 to May 2023 at two hospitals, and divided into an internal training set and an internal validation set according to a ratio of 4:1. An additional 65 patients (BD = 35, SZ = 30) and 40 HC were recruited from different hospitals, and served as an external test set. All subjects accepted the conventional brain CT examination. The DenseMD model for identify BD and SZ using multiple instance learning was developed and compared with other classical DL models. The results showed that DenseMD performed excellently with an accuracy of 0.745 in the internal validation set, whereas the accuracy of the ResNet-18, ResNeXt-50, and DenseNet-121model was 0.672, 0.664, and 0.679, respectively. For the external test set, DenseMD again outperformed other models with an accuracy of 0.724; however, the accuracy of the ResNet-18, ResNeXt-50, and DenseNet-121model was 0.657, 0.638, and 0.676, respectively. Therefore, the potential of DL models for identification of BD and SZ based on brain CT images was established, and identification ability of the DenseMD model was better than other classical DL models.

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基于脑 CT 和深度学习方法的双相情感障碍和精神分裂症识别。
随着精神疾病发病率的不断上升,准确的精神疾病临床诊断至关重要。与核磁共振成像相比,CT具有应用广泛、价格低廉、扫描时间短、患者配合度高等优点。本研究旨在构建基于CT图像的深度学习(DL)模型,对双相情感障碍(BD)和精神分裂症(SZ)进行识别。研究人员于2022年1月至2023年5月在两家医院共收集了506名患者(BD = 227,SZ = 279)和179名健康对照(HC),并按照4:1的比例将其分为内部训练集和内部验证集。另外还从不同医院招募了65名患者(BD=35,SZ=30)和40名健康对照组(HC),作为外部测试集。所有受试者均接受常规脑 CT 检查。利用多实例学习开发了用于识别 BD 和 SZ 的 DenseMD 模型,并与其他经典 DL 模型进行了比较。结果表明,在内部验证集中,DenseMD 的准确率为 0.745,表现出色,而 ResNet-18、ResNeXt-50 和 DenseNet-121 模型的准确率分别为 0.672、0.664 和 0.679。在外部测试集上,DenseMD 的准确率为 0.724,再次超过了其他模型;然而,ResNet-18、ResNeXt-50 和 DenseNet-121 模型的准确率分别为 0.657、0.638 和 0.676。因此,DL 模型在基于脑 CT 图像的 BD 和 SZ 识别中的潜力得到了证实,并且 DenseMD 模型的识别能力优于其他经典 DL 模型。
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