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Artificial neural networks in the recognition of the presence of thyroid disease in patients with atrophic body gastritis

机译:人工神经网络识别萎缩性胃炎患者甲状腺疾病的存在

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摘要

AIM: To investigate the role of artificial neural networks in predicting the presence of thyroid disease in atrophic body gastritis patients.METHODS: A dataset of 29 input variables of 253 atrophic body gastritis patients was applied to artificial neural networks (ANNs) using a data optimisation procedure (standard ANNs, T&T-IS protocol, TWIST protocol). The target variable was the presence of thyroid disease.RESULTS: Standard ANNs obtained a mean accuracy of 64.4% with a sensitivity of 69% and a specificity of 59.8% in recognizing atrophic body gastritis patients with thyroid disease. The optimization procedures (T&T-IS and TWIST protocol) improved the performance of the recognition task yielding a mean accuracy, sensitivity and specificity of 74.7% and 75.8%, 78.8% and 81.8%, and 70.5% and 69.9%, respectively. The increase of sensitivity of the TWIST protocol was statistically significant compared to T&T-IS.CONCLUSION: This study suggests that artificial neural networks may be taken into consideration as a potential clinical decision-support tool for identifying ABG patients at risk for harbouring an unknown thyroid disease and thus requiring diagnostic work-up of their thyroid status.
机译:目的:探讨人工神经网络在预测萎缩性胃炎患者甲状腺疾病中的作用。方法:采用数据优化技术,将253例萎缩性胃炎患者的29个输入变量的数据集应用于人工神经网络(ANN)程序(标准ANN,T&T-IS协议,TWIST协议)。结果:标准人工神经网络在识别萎缩性胃炎并发甲状腺疾病的患者中平均准确度为64.4%,灵敏度为69%,特异性为59.8%。优化程序(T&T-IS和TWIST协议)提高了识别任务的性能,平均准确度,灵敏度和特异性分别为74.7%和75.8%,78.8%和81.8%,70.5%和69.9%。结论:这项研究表明,人工神经网络可以作为一种潜在的临床决策支持工具,用于识别有携带未知甲状腺风险的ABG患者的潜在临床决策支持工具疾病,因此需要对其甲状腺状况进行诊断检查。

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