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

被引:100
作者
Maner, William L. [1 ]
Garfield, Robert E. [1 ]
机构
[1] Univ Texas, Med Branch, Dept Obstet & Gynecol, Galveston, TX 77555 USA
关键词
uterus; EMG; labor; prediction; classification;
D O I
10.1007/s10439-006-9248-8
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
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.
引用
收藏
页码:465 / 473
页数:9
相关论文
共 29 条
[1]   Uterine activity during pregnancy and labor assessed by simultaneous recordings from the myometrium and abdominal surface in the rat [J].
Buhimschi, C ;
Boyle, MB ;
Saade, GR ;
Garfield, RE .
AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 1998, 178 (04) :811-822
[2]   UTERINE ELECTROMYOGRAPHY - A CRITICAL-REVIEW [J].
DEVEDEUX, D ;
MARQUE, C ;
MANSOUR, S ;
GERMAIN, G ;
DUCHENE, J .
AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 1993, 169 (06) :1636-1653
[3]   Application of multivariate analysis and artificial neural networks for the differentiation of red wines from the Canary Islands according to the island of origin [J].
Díaz, C ;
Conde, JE ;
Estévez, D ;
Olivero, SJP ;
Trujillo, JPP .
JOURNAL OF AGRICULTURAL AND FOOD CHEMISTRY, 2003, 51 (15) :4303-4307
[4]  
Fausett L., 1994, Fundamentals of neural networks: architectures, algorithms, and applications, chapter 1, V1st ed.
[5]   ALTERATION OF 24-HOUR RHYTHMS IN MYOMETRIAL ACTIVITY IN THE CHRONICALLY CATHETERIZED PREGNANT RHESUS-MONKEY AFTER A 6-HOUR SHIFT IN THE LIGHT-DARK CYCLE [J].
FIGUEROA, JP ;
HONNEBIER, MBOM ;
JENKINS, S ;
NATHANIELSZ, PW .
AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 1990, 163 (02) :648-654
[6]   Comparing uterine electromyography activity of antepartum patients versus term labor patients [J].
Garfield, RE ;
Maner, WL ;
MacKay, LB ;
Schlembach, D ;
Saade, GR .
AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 2005, 193 (01) :23-29
[7]   Use of uterine EMG and cervical LIF in monitoring pregnant patients [J].
Garfield, RE ;
Maner, WL ;
Maul, H ;
Saade, GR .
BJOG-AN INTERNATIONAL JOURNAL OF OBSTETRICS AND GYNAECOLOGY, 2005, 112 :103-108
[8]   Instrumentation for the diagnosis of term and preterm labour [J].
Garfield, RE ;
Chwalisz, K ;
Shi, LL ;
Olson, G ;
Saade, GR .
JOURNAL OF PERINATAL MEDICINE, 1998, 26 (06) :413-436
[9]   Control and assessment of the uterus and cervix during pregnancy and labour [J].
Garfield, RE ;
Saade, G ;
Buhimschi, C ;
Buhimschi, I ;
Shi, L ;
Shi, SQ ;
Chwalisz, K .
HUMAN REPRODUCTION UPDATE, 1998, 4 (05) :673-695
[10]   Hybrid artificial neural network segmentation of precise and accurate inversion recovery (PAIR) images from normal human brain [J].
Glass, JO ;
Reddick, WE ;
Goloubeva, O ;
Yo, V ;
Steen, RG .
MAGNETIC RESONANCE IMAGING, 2000, 18 (10) :1245-1253