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Journal of Nursing ›› 2022, Vol. 29 ›› Issue (3): 12-18.doi: 10.16460/j.issn1008-9969.2022.03.012

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Value of Risk Assessment Models Based on Decision Tree C5.0 or Logistic Regression in Predicting Postpartum Stress Urinary Incontinence

JIAO Zi-shan, ZHANG Xin-yue, SHA Kai-hui   

  1. School of Nursing, Binzhou Medical College, Binzhou 256600, China
  • Received:2021-08-04 Published:2022-03-04

Abstract: Objective To To compare the value of risk assessment models based on decision tree C5.0 or logistic regression in predicting postpartum stress urinary incontinence. Methods A total of 505 females in postpartum recovery clinic of one tertiary grade-A hospital in Shandong Province from July 2020 to January 2021 were selected as research objects. They were surveyed for general information and the data of postpartum stress urinary incontinence. An EEG feedback device was used to test the function of pelvic floor. All the data were divided into training set (n=450) and test set (n=145). Risk assessment models established with decision tree C5.0 or logistic regression were established respectively and their predictive value was assessed in terms of specificity, sensibility, accuracy, negative predictive value, positive predictive value, Youden index, and area under the curve (AUC) of receiver operating characteristic curve (ROC). Results In the training set, the accuracy, sensibility, specificity, positive predictive value, negative predictive value, Youden index and AUC of the two risk assessment models were 98.9% vs 85.6%; 94.7% vs 48.7%; 100.0% vs 95.4%; 100.0% vs 74.0%; 98.6% vs 87.4%; 94.7% vs 44.1% and 0.974 vs 0.721 respectively. The AUC of the two models indicated statistical significance (P<0.05). In test set, the accuracy, sensibility, specificity, positive predictive value, negative predictive value, Youden index and AUC of the two risk assessment models were 87.6% vs 82.8%; 78.6% vs 46.4%; 89.7% vs 91.5%; 64.7% vs 56.5%; 94.6% vs 87.7%; 68.3% vs 37.9% and 0.842 vs 0.689 respectively. The AUC of the two models showed statistical significance (P<0.05). Conclusion Decision tree C5.0-based risk assessment model presents better performance in predicting postpartum stress urinary incontinence than the model established with logistic regression.

Key words: decision tree C5.0, logistic regression, postpartum, stress urinary incontinence, predictive model

CLC Number: 

  • R473.71
[1] Qi X, Shan J, Peng L.The Effect Of a Comprehensive Care and Rehabilitation Program on Enhancing Pelvic Floor Muscle Functions and Preventing Postpartum Stress Urinary Incontinence[J]. Medicine (Baltimore). 2019, 98(35):e16907. DOI:10.1097/MD.0000000000016907.
[2] Surkan PJ, Sakyi KS, Christian P, et al.Risk of Depressive Symptoms Associated with Morbidity in Postpartum Women in Rural Bangladesh[J]. Matern Child Health J. 2017, 21(10):1890-1900. DOI:10.1007/s10995-017-2299-7.
[3] 高燕,许方蕾. 老年女性压力性尿失禁患者盆底肌训练依从性的研究进展[J]. 护理学报,2018, 25(22):33-37. DOI:10.16460/j.issn1008-9969.2018.22.033.
[4] Huang L, Zhang SW, Wu SL, et al.The Chinese Version of ICIQ: A Useful Tool in Clinical Practice and Research on Urinary Incontinence[J]. NeurourolUrodyn, 2008,27(6):522-524. DOI:10.1002/nau.20546.
[5] 中华医学会妇产科学分会妇科盆底学组. 女性压力性尿失禁诊断和治疗指南(2017)[J]. 中华妇产科杂志,2017,52(5):289-293.DOI:10.3760/cma.j.issn.0529567x.2017.05.001.
[6] Giugale LE, Moalli PA, Canavan TP, et al.Prevalence and Predictors of Urinary Incontinence at 1 Year Postpartum[J]. Female Pelvic Med Reconstr Surg, 2021, 27(2):e436-e441. DOI:10.1097/SPV.0000000000000955.
[7] Johannessen HH, Stafne SN,Falk RS.Prevalence and Predictors of Double Incontinence 1 Year After First Delivery[J]. Int Urogynecol J,2018,29(10):1529-1535.DOI:10.1007/s00192-018-3577-7.
[8] 石薇,牛晓宇,陈悦悦,等. 成都地区产后早期尿失禁的危险因素分析[J]. 四川大学学报(医学版),2019, 50(4):598-603. DOI:10.13464/j.scuxbyxb.2019.04.028.
[9] 楼叶琳,胡洋,周一波,等. 产后压力性尿失禁风险列线图的建立与验证[J]. 中华泌尿外科杂志,2021,42(8):627-632. DOI:10.3760/cma.j.cn112330-20200422-00320.
[10] 王青,于晓杰,陈庚敏,等.产后压力性尿失禁发生的影响因素研究[J].中国妇产科临床杂志,2019, 20(2):112-115. DOI:10.13390/j.issn.1672-1861.2019.02.007.
[11] 齐小文, 单娟, 彭蕾,等. 产后压力性尿失禁发生风险预测因素的综合分析[J]. 解放军护理杂志, 2019, 36(5):29-32. DOI:10.3969/j.issn.1008-9993.2019.05.007.
[12] Nunes EFC,Sampaio LMM,Biasotto-Gonzalez DA.Biofeedback for Pelvic Floor Muscle Training in Women with Stress Urinary Incontinence:a Systematic Review with Meta-Analysis[J]. Physiotherapy. 2019,105(1):10-23. DOI:10.1016/j.physio.2018.07.012.
[13] Schreiber Pedersen L, Lose G, Høybye MT.Prevalence of Urinary Incontinence among Women and Analysis of Potential Risk Factors in Germany and Denmark[J]. Acta Obstet Gynecol Scand, 2017,96(8):939-948. DOI:10.1111/aogs.13149.
[14] 王梅杰,丁子钰,刘会范,等. 体质量管理对女性尿失禁疗效的Meta分析[J]. 安徽医药, 2020, 24(10):1913-1919. DOI:10.3969/j.issn.1009-6469.2020.10.002.
[15] Wang K, Xu X, Jia G, et al.Risk Factors for Postpartum Stress Urinary Incontinence:a Systematic Review and Meta-analysis[J]. Reprod Sci. 2020,27(12):2129-2145. DOI:10.1007/s43032-020-00254-y.
[16] Novo R, Perez-Rios M, Santiago-Pérez MI.Prevalence and Associated Risk Factors of Urinary Incontinence and Dyspareunia During Pregnancy and after Delivery[J]. Eur J Obstet Gynecol Reprod Biol,2020,245:45-50.DOI:10.1016/j.ejogrb.2019.10.020.
[17] 郭正军,宋景贵,王静.C5.0决策树模型在严重精神障碍患者服药依从性预测中的探讨[J].现代预防医学,2021,48(1):110-113;189.
[18] 王海东,张璐,王洁.C5.0决策树与RBF神经网络模型用于急性缺血性脑卒中出血性转化的风险预测性能比较[J].中华疾病控制杂志,2019,23(2):227-232.DOI:10.16462/ j.cnki. zhjbkz.2019.02.021.
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