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利用人工神经网络基于子宫肌电图数据识别足月和早产。

Identification of human term and preterm labor using artificial neural networks on uterine electromyography data.

作者信息

Maner William L, Garfield Robert E

机构信息

Department of Obstetrics and Gynecology, University of Texas Medical Branch, 301 University, Route 1062, Galveston, TX 77555, USA.

出版信息

Ann Biomed Eng. 2007 Mar;35(3):465-73. doi: 10.1007/s10439-006-9248-8. Epub 2007 Jan 17.

Abstract

OBJECTIVE

To use artificial neural networks (ANNs) on uterine electromyography (EMG) data to classify term/preterm labor/non-labor pregnant patients.

MATERIALS AND METHODS

A total of 134 term and 51 preterm women (all ultimately delivered spontaneously) were included. Uterine EMG was measured trans-abdominally using surface electrodes. "Bursts" of elevated uterine EMG, corresponding to uterine contractions, were quantified by finding the means and/or standard deviations of the power spectrum (PS) peak frequency, burst duration, number of bursts per unit time, and total burst activity. Measurement-to-delivery (MTD) time was noted for each patient. Term and preterm patient groups were sub-divided, resulting in the following categories: [term-laboring (TL): n = 75; preterm-laboring (PTL): n = 13] and [term-non-laboring (TN): n = 59; preterm-non-laboring (PTN): n = 38], with labor assessed using clinical determinations. ANN was then used on the calculated uterine EMG data to algorithmically and objectively classify patients into labor and non-labor. The percent of correctly categorized patients was found. Comparison between ANN-sorted groups was then performed using Student's t test (with p < 0.05 significant).

RESULTS

In total, 59/75 (79%) of TL patients, 12/13 (92%) of PTL patients, 51/59 (86%) of TN patients, and 27/38 (71%) of PTN patients were correctly classified.

CONCLUSION

ANNs, used with uterine EMG data, can effectively classify term/preterm labor/non-labor patients.

摘要

目的

运用人工神经网络(ANNs)对子宫肌电图(EMG)数据进行分析,以区分足月/早产/未临产的孕妇。

材料与方法

共纳入134例足月孕妇和51例早产孕妇(均最终自然分娩)。采用表面电极经腹部测量子宫肌电图。通过计算功率谱(PS)峰值频率、爆发持续时间、单位时间内爆发次数以及总爆发活动的均值和/或标准差,对与子宫收缩相对应的子宫肌电图“爆发”进行量化。记录每位患者的测量至分娩(MTD)时间。将足月和早产患者组进一步细分,得到以下类别:[足月临产(TL):n = 75;早产临产(PTL):n = 13]和[足月未临产(TN):n = 59;早产未临产(PTN):n = 38],通过临床判定评估临产情况。然后将人工神经网络应用于计算得到的子宫肌电图数据,以算法方式客观地将患者分为临产和未临产两类。计算正确分类患者的百分比。随后使用学生t检验对人工神经网络分类的组进行比较(p < 0.05具有统计学意义)。

结果

总共,TL组75例患者中有59例(79%)、PTL组13例患者中有12例(92%)、TN组59例患者中有51例(86%)、PTN组38例患者中有27例(71%)被正确分类。

结论

人工神经网络结合子宫肌电图数据可有效区分足月/早产/未临产患者。

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