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Identifying diseases that cause psychological trauma and social avoidance by GCN-Xgboost

机译:通过GCN-XGBoost识别导致心理创伤和社会避免的疾病

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With the rapid development of medical treatment, many patients not only consider the survival time, but also care about the quality of life. Changes in physical, psychological and social functions after and during treatment have caused a lot of troubles to patients and their families. Based on the bio-psycho-social medical model theory, mental health plays an important role in treatment. Therefore, it is necessary for medical staff to know the diseases which have high potential to cause psychological trauma and social avoidance (PTSA). Firstly, we obtained diseases which can cause PTSA from literatures. Then, we calculated the similarities of related-diseases to build a disease network. The similarities between diseases were based on their known related genes. Then, we obtained these diseases-related proteins from UniProt. These proteins were extracted as the features of diseases. Therefore, in the disease network, each node denotes a disease and contains the information of its related proteins, and the edges of the network are the similarities of diseases. Then, graph convolutional network (GCN) was used to encode the disease network. In this way, each disease’s own feature and its relationship with other diseases were extracted. Finally, Xgboost was used to identify PTSA diseases. We developed a novel method ‘GCN-Xgboost’ and compared it with some traditional methods. Using leave-one-out cross-validation, the AUC and AUPR were higher than some existing methods. In addition, case studies have been done to verify our results. We also discussed the trajectory of social avoidance and distress during acute survival of breast cancer patients.
机译:随着医疗的快速发展,许多患者不仅考虑生存时间,还要关心生活质量。治疗后和治疗后的身体,心理和社会功能的变化导致患者及其家人对此产生了很多麻烦。基于生物心理社会医学模型理论,心理健康在治疗中发挥着重要作用。因此,医务人员有必要了解具有造成心理创伤和社会避免(PTSA)的高潜力的疾病。首先,我们获得了可能导致文献中的疾病的疾病。然后,我们计算了相关疾病的相似性来构建疾病网络。疾病之间的相似性基于其已知的相关基因。然后,我们从Uniprot获得了这些疾病相关的蛋白质。将这些蛋白质作为疾病的特征提取。因此,在疾病网络中,每个节点表示疾病并包含其相关蛋白的信息,网络的边缘是疾病的相似之处。然后,图形卷积网络(GCN)用于编码疾病网络。通过这种方式,提取了每种疾病自己的特征及其与其他疾病的关系。最后,XGBoost用于鉴定前期疾病。我们开发了一种新型方法'GCN-XGBoost',并与一些传统方法进行比较。使用休假交叉验证,AUC和AUPR高于某些现有方法。此外,已经完成了案例研究以验证我们的结果。我们还讨论了乳腺癌患者急性生存期间的社会避税和痛苦的轨迹。

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