Three machine learning algorithms and their utility in exploring risk factors associated with primary cesarean section in low-risk women: A methods paper

被引:10
作者
Clark, Rebecca R. S. [1 ]
Hou, Jintong [2 ]
机构
[1] Univ Penn, Sch Nursing, Leonard Davis Inst Hlth Econ, Ctr Hlth Outcomes & Policy Res, Philadelphia, PA 19104 USA
[2] Drexel Univ, Sch Publ Hlth, Philadelphia, PA 19104 USA
关键词
birth; machine learning; methods; pregnancy; MORBIDITY; DELIVERY;
D O I
10.1002/nur.22122
中图分类号
R47 [护理学];
学科分类号
1011 ;
摘要
Machine learning, a branch of artificial intelligence, is increasingly used in health research, including nursing and maternal outcomes research. Machine learning algorithms are complex and involve statistics and terminology that are not common in health research. The purpose of this methods paper is to describe three machine learning algorithms in detail and provide an example of their use in maternal outcomes research. The three algorithms, classification and regression trees, least absolute shrinkage and selection operator, and random forest, may be used to understand risk groups, select variables for a model, and rank variables' contribution to an outcome, respectively. While machine learning has plenty to contribute to health research, it also has some drawbacks, and these are discussed as well. To provide an example of the different algorithms' function, they were used on a completed cross-sectional study examining the association of oxytocin total dose exposure with primary cesarean section. The results of the algorithms are compared to what was done or found using more traditional methods.
引用
收藏
页码:559 / 570
页数:12
相关论文
共 26 条
[1]   Labor Intervention and Outcomes in Women Who Are Nulliparous and Obese: Comparison of Nurse-Midwife to Obstetrician Intrapartum Care [J].
Carlson, Nicole S. ;
Corwin, Elizabeth J. ;
Lowe, Nancy K. .
JOURNAL OF MIDWIFERY & WOMENS HEALTH, 2017, 62 (01) :29-39
[2]   Prenatal maternal depression is associated with low birth weight through shorter gestational age in term infants in Korea [J].
Chang, Hyoung Yoon ;
Keyes, Katherine M. ;
Lee, Kyung-Sook ;
Choi, In Ae ;
Kim, Se Joo ;
Kim, Kyung Won ;
Shin, Youn Ho ;
Ahn, Kang Mo ;
Hong, Soo-Jong ;
Shin, Yee-Jin .
EARLY HUMAN DEVELOPMENT, 2014, 90 (01) :15-20
[3]   Three machine learning algorithms and their utility in exploring risk factors associated with primary cesarean section in low-risk women: A methods paper [J].
Clark, Rebecca R. S. ;
Hou, Jintong .
RESEARCH IN NURSING & HEALTH, 2021, 44 (03) :559-570
[4]   Maternal Mortality and Morbidity in the United States: Where Are We Now? [J].
Creanga, Andreea A. ;
Berg, Cynthia J. ;
Ko, Jean Y. ;
Farr, Sherry L. ;
Tong, Van T. ;
Bruce, F. Carol ;
Callaghan, William M. .
JOURNAL OF WOMENS HEALTH, 2014, 23 (01) :3-9
[5]   A decision support system for predicting the treatment of ectopic pregnancies [J].
De Ramon Fernandez, Alberto ;
Ruiz Fernandez, Daniel ;
Prieto Sanchez, Maria Teresa .
INTERNATIONAL JOURNAL OF MEDICAL INFORMATICS, 2019, 129 :198-204
[6]  
Decary M., 2019, ARTIFICIAL INTELLIGE
[7]   Leveraging Electronic Health Records to Learn Progression Path for Severe Maternal Morbidity [J].
Gao, Cheng ;
Osmundson, Sarah ;
Yan, Xiaowei ;
Edwards, Digna Velez ;
Malin, Bradley A. ;
Chen, You .
MEDINFO 2019: HEALTH AND WELLBEING E-NETWORKS FOR ALL, 2019, 264 :148-152
[8]   Learning to Identify Severe Maternal Morbidity from Electronic Health Records [J].
Gao, Cheng ;
Osmundson, Sarah ;
Yan, Xiaowei ;
Edwards, Digna Velez ;
Malin, Bradley A. ;
Chen, You .
MEDINFO 2019: HEALTH AND WELLBEING E-NETWORKS FOR ALL, 2019, 264 :143-147
[9]   Predicting Length of Stay for Obstetric Patients via Electronic Medical Records [J].
Gao, Cheng ;
Kho, Abel N. ;
Ivory, Catherine ;
Osmundson, Sarah ;
Malin, Bradley A. ;
Chen, You .
MEDINFO 2017: PRECISION HEALTHCARE THROUGH INFORMATICS, 2017, 245 :1019-1023
[10]   Estimating risk of severe neonatal morbidity in preterm births under 32 weeks of gestation [J].
Hamilton, Emily F. ;
Dyachenko, Alina ;
Ciampi, Antonio ;
Maurel, Kimberly ;
Warrick, Philip A. ;
Garite, Thomas J. .
JOURNAL OF MATERNAL-FETAL & NEONATAL MEDICINE, 2020, 33 (01) :73-80