Application of machine learning models in predicting length of stay among healthcare workers in underserved communities in South Africa

被引:16
|
作者
Moyo, Sangiwe [1 ,3 ]
Tuan Nguyen Doan [1 ,2 ]
Yun, Jessica Ann [3 ]
Tshuma, Ndumiso [3 ]
机构
[1] Rosebank, Africa Hlth Placements, Johannesburg, South Africa
[2] Yale Univ, New Haven, CT USA
[3] Best Hlth Solut, 107 Louis Botha Ave,POB 92666, Johannesburg, South Africa
来源
HUMAN RESOURCES FOR HEALTH | 2018年 / 16卷
关键词
Machine learning; Artificial intelligence; Health workers; Modeling; Staff retention; RETENTION;
D O I
10.1186/s12960-018-0329-1
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
BackgroundHuman resource planning in healthcare can employ machine learning to effectively predict length of stay of recruited health workers who are stationed in rural areas. While prior studies have identified a number of demographic factors related to general health practitioners' decision to stay in public health practice, recruitment agencies have no validated methods to predict how long these health workers will commit to their placement. We aim to use machine learning methods to predict health professional's length of practice in the rural public healthcare sector based on their demographic information.MethodsRecruitment and retention data from Africa Health Placements was used to develop machine-learning models to predict health workers' length of practice. A cross-validation technique was used to validate the models, and to evaluate which model performs better, based on their respective aggregated error rates of prediction. Length of stay was categorized into four groups for classification (less than 1year, less than 2years, less than 3years, and more than 3years). R, a statistical computing language, was used to train three machine learning models and apply 10-fold cross validation techniques in order to attain evaluative statistics.ResultsThe three models attain almost identical results, with negligible difference in accuracy. The best-performing model (Multinomial logistic classifier) achieved a 47.34% [SD 1.63] classification accuracy while the decision tree model achieved an almost comparable 45.82% [SD 1.69]. The three models achieved an average AUC of approximately 0.66 suggesting sufficient predictive signal at the four categorical variables selected.ConclusionsMachine-learning models give us a demonstrably effective tool to predict the recruited health workers' length of practice. These models can be adapted in future studies to incorporate other information beside demographic details such as information about placement location and income. Beyond the scope of predicting length of practice, this modelling technique will also allow strategic planning and optimization of public healthcare recruitment.
引用
收藏
页数:9
相关论文
共 50 条
  • [41] A Comparison of Nine Machine Learning Mutagenicity Models and Their Application for Predicting Pyrrolizidine Alkaloids
    Helma, Christoph
    Schoening, Verena
    Drewe, Juergen
    Boss, Philipp
    FRONTIERS IN PHARMACOLOGY, 2021, 12
  • [42] Machine Learning Models for Predicting Stroke Mortality in Malaysia: An Application and Comparative Analysis
    Nawi, Che Muhammad Nur Hidayat Che
    Hairon, Suhaily Mohd
    Yahya, Wan Nur Nafisah Wan
    Zaidi, Wan Asyraf Wan
    Musa, Kamarul Imran
    CUREUS JOURNAL OF MEDICAL SCIENCE, 2023, 15 (12)
  • [43] Exploratory application of machine learning methods on patient reported data in the development of supervised models for predicting outcomes
    Verma, Deepika
    Jansen, Duncan
    Bach, Kerstin
    Poel, Mannes
    Mork, Paul Jarle
    d'Hollosy, Wendy Oude Nijeweme
    BMC MEDICAL INFORMATICS AND DECISION MAKING, 2022, 22 (01)
  • [44] Development and comparison of machine-learning models for predicting prolonged postoperative length of stay in lung cancer patients following video-assisted thoracoscopic surgery
    Zhang, Guolong
    Liu, Xuanhui
    Hu, Yuning
    Luo, Qinchi
    Ruan, Liang
    Xie, Hongxia
    Zeng, Yingchun
    ASIA-PACIFIC JOURNAL OF ONCOLOGY NURSING, 2024, 11 (06)
  • [45] Predicting surgical department occupancy and patient length of stay in a paediatric hospital setting using machine learning: a pilot study
    Corren, Yuval Barak
    Merrill, Joshua
    Wilkinson, Ronald
    Cannon, Courtney
    Bickel, Jonathan
    Reis, Ben Y.
    BMJ HEALTH & CARE INFORMATICS, 2022, 29 (01)
  • [46] Predicting Inpatient Length of Stay After Brain Tumor Surgery: Developing Machine Learning Ensembles to Improve Predictive Performance
    Muhlestein, Whitney E.
    Akagi, Dallin S.
    Davies, Jason M.
    Chambless, Lola B.
    NEUROSURGERY, 2019, 85 (03) : 384 - 393
  • [47] Factors influencing motivation and job satisfaction among supervisors of community health workers in marginalized communities in South Africa
    Akintola, Olagoke
    Chikoko, Gamuchirai
    HUMAN RESOURCES FOR HEALTH, 2016, 14
  • [48] Factors influencing motivation and job satisfaction among supervisors of community health workers in marginalized communities in South Africa
    Olagoke Akintola
    Gamuchirai Chikoko
    Human Resources for Health, 14
  • [49] Application of machine learning for risky sexual behavior interventions among factory workers in China
    Zhang, Fang
    Zhu, Shiben
    Chen, Siyu
    Hao, Ziyu
    Fang, Yuan
    Zou, Huachun
    Cai, Yong
    Cao, Bolin
    Zhang, Kechun
    Cao, He
    Chen, Yaqi
    Hu, Tian
    Wang, Zixin
    FRONTIERS IN PUBLIC HEALTH, 2023, 11
  • [50] Forecasting Hourly Global Horizontal Solar Irradiance in South Africa Using Machine Learning Models
    Mutavhatsindi, Tendani
    Sigauke, Caston
    Mbuvha, Rendani
    IEEE ACCESS, 2020, 8 : 198872 - 198885