Kshirsagar A, Seftel A, Ross L, Mohamed M, Niederberger C
Department of Urology, University of Illinois at Chicago, Chicago, IL 60612-7216, USA.
Int J Impot Res. 2006 Jan-Feb;18(1):47-51. doi: 10.1038/sj.ijir.3901369.
Hypogonadism, a disorder associated with aging, can cause significant morbidity. As clinical manifestations of hypogonadism can be subtle, the challenge and the burden of diagnosis remain the responsibility of the clinician. Four different analytic methods were used to predict hypogonadism in men based upon age, the presence of erectile dysfunction (ED) and depression. 218 men were classified by age, serum testosterone level, the presence of ED and depression. Depression was determined by the Center for Epidemiologic Studies Depression Scale (CES-D). ED was assessed by the Sexual Health Inventory for Men (SHIM). Hypogonadism was defined as a serum testosterone level <300 ng/dl. An artificial neural network (ANN) was programmed and trained to predict hypogonadism based upon age, SHIM, and CES-D scores. Subject data was randomly partitioned into a training set of 148 (67.9%) and a test set of 70 (32.1%). The ANN processed the test set only after the training was complete. The discrete predicted binary output was set to (0) if testosterone level was <300 ng/dl or (1) if >300 ng/dl. The data was also analyzed by standard logistic regression (LR), linear and quadratic discriminant function analysis (LDFA and QDFA, respectively). Reverse regression (RR) analysis evaluated the statistical significance of each risk factor. The ANN can accurately predict hypogonadism in men based upon age, the presence of ED, and depression (receiver-operating characteristic=0.725). A four hidden node network was found to have the highest accuracy. RR revealed the depression index score to be most significant variable (P=0.0019), followed by SHIM score (P=0.00602), and then by age (P=0.015). Hypogonadism can be predicated by an ANN using the input factors of age, ED, and depression. This model can help clinicians assess the need for endocrinologic evaluation in men.
性腺功能减退是一种与衰老相关的疾病,可导致严重的发病情况。由于性腺功能减退的临床表现可能不明显,诊断的挑战和负担仍然落在临床医生身上。基于年龄、勃起功能障碍(ED)的存在和抑郁情况,使用了四种不同的分析方法来预测男性性腺功能减退。218名男性根据年龄、血清睾酮水平、ED的存在和抑郁情况进行了分类。抑郁通过流行病学研究中心抑郁量表(CES-D)来确定。ED通过男性性健康量表(SHIM)进行评估。性腺功能减退定义为血清睾酮水平<300 ng/dl。编写并训练了一个人工神经网络(ANN),以根据年龄、SHIM和CES-D评分来预测性腺功能减退。受试者数据被随机分为一个包含148名(67.9%)的训练集和一个包含70名(32.1%)的测试集。ANN仅在训练完成后才处理测试集。如果睾酮水平<300 ng/dl,离散预测二元输出设置为(0);如果>300 ng/dl,则设置为(1)。数据还通过标准逻辑回归(LR)、线性和二次判别函数分析(分别为LDFA和QDFA)进行了分析。反向回归(RR)分析评估了每个风险因素的统计学意义。ANN可以根据年龄、ED的存在和抑郁情况准确预测男性性腺功能减退(受试者工作特征=0.725)。发现一个具有四个隐藏节点的网络具有最高的准确性。RR显示抑郁指数评分是最显著的变量(P=0.0019),其次是SHIM评分(P=0.00602),然后是年龄(P=0.015)。性腺功能减退可以通过使用年龄、ED和抑郁等输入因素的ANN来预测。该模型可以帮助临床医生评估男性进行内分泌评估的必要性。