Impact of COVID-19 response on global surgical volumes: an ongoing observational study
暂无分享,去创建一个
Jacob E. Sunshine | N. Kassebaum | J. Sunshine | E. Harrison | V. O’Reilly-Shah | C. Jabaley | Dustin R. Long | V. Moll | F. Evans | D. Long | W. V. Van Cleve | Vanessa Moll | Faye M. Evans | William C. Van Cleve
[1] M. Shrime,et al. Operative volume and surgical case distribution in Uganda’s public sector: a stratified randomized evaluation of nationwide surgical capacity , 2019, BMC Health Services Research.
[2] E. Ameh,et al. Estimates of number of children and adolescents without access to surgical care , 2019, Bulletin of the World Health Organization.
[3] A. Dondorp,et al. Addressing the information deficit in global health: lessons from a digital acute care platform in Sri Lanka , 2019, BMJ Global Health.
[4] Martijn Tennekes,et al. tmap: Thematic Maps in R , 2018 .
[5] F. Wolf,et al. Crowdsourcing sugammadex adverse event rates using an in-app survey: feasibility assessment from an observational study , 2018, Therapeutic advances in drug safety.
[6] V. O’Reilly-Shah,et al. Evidence for increased use of the Society of Pediatric Anesthesia Critical Events Checklist in resource‐limited environments: A retrospective observational study of app data , 2018, Paediatric anaesthesia.
[7] V. O’Reilly-Shah. Factors influencing healthcare provider respondent fatigue answering a globally administered in-app survey , 2017, PeerJ.
[8] E. Harrison,et al. The efficiency, accuracy and acceptability of smartphone-delivered data collection in a low-resource setting - A prospective study. , 2017, International journal of surgery.
[9] V. O’Reilly-Shah,et al. Assessing the global reach and value of a provider-facing healthcare app using large-scale analytics , 2017, BMJ Global Health.
[10] T. Weiser,et al. New global surgical and anaesthesia indicators in the World Development Indicators dataset , 2017, BMJ Global Health.
[11] Sean Mackey,et al. Survalytics: An Open-Source Cloud-Integrated Experience Sampling, Survey, and Analytics and Metadata Collection Module for Android Operating System Apps , 2016, JMIR mHealth and uHealth.
[12] Tej D. Azad,et al. Size and distribution of the global volume of surgery in 2012 , 2016, Bulletin of the World Health Organization.
[13] A. Michaels. Global Surgery 2030: evidence and solutions for achieving health, welfare, and economic development. , 2019, Bulletin of the American College of Surgeons.
[14] Franklin Dexter,et al. Anesthesia Workload Nationally During Regular Workdays and Weekends , 2015, Anesthesia and analgesia.
[15] Gordon J. Ross. Parametric and Nonparametric Sequential Change Detection in R: The cpm package , 2012 .
[16] A. Gawande,et al. Global Surgery 2030: evidence and solutions for achieving health, welfare, and economic development , 2015, The Lancet.
[17] T. Weiser,et al. Global access to surgical care: a modelling study. , 2015, The Lancet. Global health.
[18] Jesse M. Ehrenfeld,et al. Metadata from Data: Identifying Holidays from Anesthesia Data , 2015, Journal of Medical Systems.
[19] Jeroen Ooms,et al. The jsonlite Package: A Practical and Consistent Mapping Between JSON Data and R Objects , 2014, ArXiv.
[20] Luis G. Vargas,et al. Observations on Surgical Demand Time Series: Detection and Resolution of Holiday Variance , 2008, Anesthesiology.
[21] W. Berry,et al. An estimation of the global volume of surgery: a modelling strategy based on available data , 2008, The Lancet.
[22] R. Stott,et al. The World Bank , 2008, Annals of tropical medicine and parasitology.