Orunesu E, Bagnasco M, Salmaso C, Altrinetti V, Bernasconi D, Del Monte P, Pesce G, Marugo M, Mela G S
University of Genoa, Genoa, Italy.
Eur J Clin Invest. 2004 Mar;34(3):210-7. doi: 10.1111/j.1365-2362.2004.01318.x.
Graves' disease (GD) is an autoimmune disorder characterized by hyperthyroidism, which can relapse in many patients after antithyroid drug treatment withdrawal. Several studies have been performed to predict the clinical course of GD in patients treated with antithyroid drugs, without conclusive results. The aim of this study was to define a set of easily achievable variables able to predict, as early as possible, the clinical outcome of GD after antithyroid therapy.
We studied 71 patients with GD treated with methimazole for 18 months: 27 of them achieved stable remission for at least 2 years after methimazole therapy withdrawal, whereas 44 patients relapsed. We used for the first time a perceptron-like artificial neural network (ANN) approach to predict remission or relapse after methimazole withdrawal. Twenty-seven variables obtained at diagnosis or during treatment were considered.
Among different combinations, we identified an optimal set of seven variables available at the time of diagnosis, whose combination was useful to efficiently predict the outcome of the disease following therapy withdrawal in approximately 80% of cases. This set consists of the following variables: heart rate, presence of thyroid bruits, psycological symptoms requiring psychotropic drugs, serum TGAb and fT4 levels at presentation, thyroid-ultrasonography findings and cigarette smoking.
This study reveals that perceptron-like ANN is potentially a useful approach for GD-management in choosing the most appropriate therapy schedule at the time of diagnosis.
格雷夫斯病(GD)是一种以甲状腺功能亢进为特征的自身免疫性疾病,许多患者在停用抗甲状腺药物治疗后会复发。已经进行了多项研究来预测接受抗甲状腺药物治疗的GD患者的临床病程,但结果尚无定论。本研究的目的是确定一组易于获得的变量,以便尽早预测抗甲状腺治疗后GD的临床结局。
我们研究了71例接受甲巯咪唑治疗18个月的GD患者:其中27例在停用甲巯咪唑治疗后实现了至少2年的稳定缓解,而44例患者复发。我们首次使用类似感知器的人工神经网络(ANN)方法来预测停用甲巯咪唑后的缓解或复发。考虑了在诊断时或治疗期间获得的27个变量。
在不同的组合中,我们确定了一组在诊断时可用的七个最佳变量,其组合有助于在大约80%的病例中有效预测停药后疾病的结局。这组变量包括:心率、甲状腺杂音的存在、需要使用精神药物治疗的心理症状、就诊时血清TGAb和fT4水平、甲状腺超声检查结果和吸烟情况。
本研究表明,类似感知器的ANN可能是一种有用的方法,可用于在诊断时选择最合适的治疗方案来管理GD。