Zhong Lin-Kun, Xie Chang-Lian, Jiang Shan, Deng Xing-Yan, Gan Xiao-Xiong, Feng Jian-Hua, Cai Wen-Song, Liu Chi-Zhuai, Shen Fei, Miao Jian-Hang, Xu Bo
Department of General Surgery, Zhongshan City People's Hospital, Zhongshan, China.
Intensive Care Unit, Zhongshan Hospital of Traditional Chinese Medicine Affiliated to Guangzhou University of Chinese Medicine, Zhongshan, China.
Front Cell Dev Biol. 2021 Aug 23;9:740267. doi: 10.3389/fcell.2021.740267. eCollection 2021.
Thyroid cancer ranks second in the incidence rate of endocrine malignant cancer. Thyroid cancer is usually asymptomatic at the initial stage, which makes patients easily miss the early treatment time. Combining genetic testing with imaging can greatly improve the diagnostic efficiency of thyroid cancer. Researchers have discovered many genes related to thyroid cancer. However, the effects of these genes on thyroid cancer are different. We hypothesize that there is a stronger interaction between the core genes that cause thyroid cancer. Based on this hypothesis, we constructed an interaction network of thyroid cancer-related genes. We traversed the network through random walks, and sorted thyroid cancer-related genes through ADNN which is fusion of Adaboost and deep neural network (DNN). In addition, we discovered more thyroid cancer-related genes by ADNN. In order to verify the accuracy of ADNN, we conducted a fivefold cross-validation. ADNN achieved AUC of 0.85 and AUPR of 0.81, which are more accurate than other methods.
甲状腺癌在内分泌恶性肿瘤发病率中排名第二。甲状腺癌在初始阶段通常没有症状,这使得患者很容易错过早期治疗时机。将基因检测与影像学相结合可以大大提高甲状腺癌的诊断效率。研究人员已经发现了许多与甲状腺癌相关的基因。然而,这些基因对甲状腺癌的影响各不相同。我们假设导致甲状腺癌的核心基因之间存在更强的相互作用。基于这一假设,我们构建了一个甲状腺癌相关基因的相互作用网络。我们通过随机游走遍历该网络,并通过将Adaboost和深度神经网络(DNN)融合的ADNN对甲状腺癌相关基因进行排序。此外,我们通过ADNN发现了更多与甲状腺癌相关的基因。为了验证ADNN的准确性,我们进行了五重交叉验证。ADNN的AUC为0.85,AUPR为0.81,比其他方法更准确。