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Assisting the Diagnosis of Thyroid Diseases with Bayesian-Type and SOM-Type Neural Networks Making Use of Routine Test Data

机译:利用贝叶斯型和SOM型神经网络利用常规测试数据协助甲状腺疾病的诊断

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Patients with hyperthyroidism sometimes take much time to receive the final diagnosis.To improve patient QOL,simple screening for hyperthyroidism by thyroid non-specialists at the physical check-up is highly expected.Therefore,we applied both Bayesian-type and SOM-type neural networks since we assured the approach useful in analysing thyroid function diagnosis in the previous work.Routine test (14 parameters)data from 66 subjects with a known diagnosis (18 patients with hyperthyroidism and 48 healthy volunteers)were adopted as learning data,and then 142 individuals who also received the same routine tests at the Tohoku University Hospital were screened to predict patients with hyperthyroidism.Both neural networks using 14 parameters predicted several patients as having hyperthyroidism with high probability,including all three hyperthyroid patients diagnosed later by the physician.Further detailed analysis of the routine test parameters that were important for classification found that screening with a set of three parameters (alkaline phosphatase,serum creatinine and total cholesterol)or plus aspartate aminotransferase allowed for quite accurate screening.These results showed that the same neural networks as previous work allows simple screening of patients for hyperthyroidism on the basis of routine test data,and that physicians not specializing in the thyroid can rapidly identify individuals suspected of having hyperthyroidism,to permit a rapid referral for examination and treatment by thyroid specialists.
机译:甲状腺功能亢进症患者有时需要花费大量时间来进行最终诊断。为提高患者的QOL,强烈期望由甲状腺非专业人员在进行体检时对甲状腺功能亢进症进行简单筛查。因此,我们同时应用了贝叶斯型和SOM型神经因为我们保证在以前的工作中该方法可用于分析甲状腺功能诊断,所以网络被采用。来自66名已知诊断受试者(18例甲状腺功能亢进患者和48名健康志愿者)的常规检查数据(14个参数)被用作学习数据,然后142个筛选出也在东北大学医院接受相同常规检查的患者以预测甲亢患者。使用14个参数的两个神经网络均预测几名患者患有甲亢的可能性很高,其中包括由医生随后诊断出的所有三名甲亢患者。对分类很重要的常规测试参数的分析发现,通过一组三个参数(碱性磷酸酶,血清肌酐和总胆固醇)或天冬氨酸转氨酶进行筛查可以进行非常准确的筛查。这些结果表明,与以前的工作相同的神经网络可以根据常规对甲状腺功能亢进症患者进行简单筛查测试数据,以及不专门研究甲状腺的医生可以迅速识别出怀疑患有甲状腺功能亢进症的人,从而可以迅速将其转介甲状腺专家进行检查和治疗。

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