Liew P-L, Lee Y-C, Lin Y-C, Lee T-S, Lee W-J, Wang W, Chien C-W
Department of Pathology, En-Chu Kong Hospital, Taipei Hsien, Taiwan.
Dig Liver Dis. 2007 Apr;39(4):356-62. doi: 10.1016/j.dld.2007.01.003. Epub 2007 Feb 20.
Obesity is a risk factor for gallbladder disease. The authors retrospectively analyse the prevalence and risk factors of gallbladder disease using logistic regression and artificial neural networks among obese patients in Taiwan.
Artificial neural networks is a popular technique, which can detect complex patterns within data. They have not been applied to risk of gallbladder disease in obese population. We studied the risk factors associated with gallstones in 117 obese patients who were undergoing bariatric surgery between February 1999 and October 2005. Artificial neural networks, constructed with three-layered back-propagation algorithm, were trained to predict the risk of gallbladder disease. Thirty input variables including clinical data (gender, age, body mass index and associated diseases), laboratory evaluation and histopathologic findings of gallbladder were obtained from the patient records. The result was compared with a logistic regression model developed from the same database.
Artificial neural networks demonstrated better average classification rate and lower Type II errors than those of logistic regression. The risk factors from both data mining techniques were diastolic blood pressure, inflammatory condition, abnormal glucose metabolism and cholesterolosis. The biological significance of inflammatory condition in obese population requires further investigation.
Artificial neural networks might be a useful tool to predict the risk factors and prevalence of gallbladder disease and gallstone development in obese patients on the basis of multiple variables related to laboratory and pathological features. The performance of artificial neural networks was better than traditional modeling techniques.
肥胖是胆囊疾病的一个危险因素。作者回顾性分析了台湾肥胖患者胆囊疾病的患病率及危险因素,采用逻辑回归和人工神经网络方法。
人工神经网络是一种流行的技术,能够检测数据中的复杂模式。此前尚未应用于肥胖人群胆囊疾病风险的研究。我们研究了1999年2月至2005年10月期间接受减肥手术的117例肥胖患者中与胆结石相关的危险因素。采用三层反向传播算法构建人工神经网络,用于预测胆囊疾病风险。从患者记录中获取30个输入变量,包括临床数据(性别、年龄、体重指数及相关疾病)、实验室评估和胆囊组织病理学检查结果。将结果与基于同一数据库建立的逻辑回归模型进行比较。
与逻辑回归相比,人工神经网络显示出更好的平均分类率和更低的II类错误率。两种数据挖掘技术得出的危险因素均为舒张压、炎症状态、糖代谢异常和胆囊胆固醇沉着症。炎症状态在肥胖人群中的生物学意义尚需进一步研究。
基于与实验室和病理特征相关的多个变量,人工神经网络可能是预测肥胖患者胆囊疾病危险因素、患病率及胆结石形成的有用工具。人工神经网络的性能优于传统建模技术。