Santos Robespierre, Haack Horst G, Maddalena Des, Hansen Ross D, Kellow John E
Department of Pharmacology, University of Sydney, Camperdown, NSW, Australia.
Scand J Gastroenterol. 2006 Mar;41(3):257-63. doi: 10.1080/00365520500234030.
Artificial neural networks (ANNs) can rapidly analyse large data sets and exploit complex mathematical relationships between variables. We investigated the feasibility of utilizing ANNs in the recognition and objective classification of primary oesophageal motor disorders, based on stationary oesophageal manometry recordings.
One hundred swallow sequences, including 80 that were representative of various oesophageal motor disorders and 20 of normal motility, were identified from 54 patients (34 F; median age 59 years). Two different ANN techniques were trained to recognize normal and abnormal swallow sequences using mathematical features of pressure wave patterns both with (ANN(+)) and without (ANN(-)) the inclusion of standard manometric criteria. The ANNs were cross-validated and their performances were compared to the diagnoses obtained by standard visual evaluation of the manometric data.
Interestingly, ANN(-), rather than ANN(+), programs gave the best overall performance, correctly classifying >80% of swallow sequences (achalasia 100%, nutcracker oesophagus 100%, ineffective oesophageal motility 80%, diffuse oesophageal spasm 60%, normal motility 80%). The standard deviation of the distal oesophageal pressure and propagated pressure wave activity were the most influential variables in the ANN(-) and ANN(+) programs, respectively.
ANNs represent a potentially important tool that can be used to improve the classification and diagnosis of primary oesophageal motility disorders.
人工神经网络(ANNs)能够快速分析大型数据集,并利用变量之间复杂的数学关系。我们基于静态食管测压记录,研究了利用人工神经网络识别和客观分类原发性食管运动障碍的可行性。
从54例患者(34例女性;中位年龄59岁)中确定了100个吞咽序列,其中包括80个代表各种食管运动障碍的序列和20个正常运动序列。使用压力波模式的数学特征,分别在纳入(ANN(+))和不纳入(ANN(-))标准测压标准的情况下,训练两种不同的人工神经网络技术来识别正常和异常吞咽序列。对人工神经网络进行交叉验证,并将其性能与通过测压数据的标准视觉评估获得的诊断结果进行比较。
有趣的是,ANN(-)程序而非ANN(+)程序给出了最佳的总体性能,正确分类了>80%的吞咽序列(贲门失弛缓症100%,胡桃夹食管100%,无效食管运动80%,弥漫性食管痉挛60%,正常运动80%)。远端食管压力的标准差和传播压力波活动分别是ANN(-)和ANN(+)程序中最具影响力的变量。
人工神经网络是一种潜在的重要工具,可用于改善原发性食管运动障碍的分类和诊断。