Jacob S Calvert1, Daniel A Price1, Christopher W Barton2, Uli K Chettipally2,3, Ritankar Das4. 1. Dascena Inc., Hayward, CA, USA. 2. Department of Emergency Medicine, University of California San Francisco, San Francisco, CA, USA. 3. Kaiser Permanente South San Francisco Medical Center, South San Francisco, CA, USA. 4. Dascena Inc., Hayward, CA, USA ritankar@dascena.com.
Abstract
OBJECTIVE: We propose a computational framework for integrating diverse patient measurements into an aggregate health score and applying it to patient stability prediction. MATERIALS AND METHODS: We mapped retrospective patient data from the Multiparameter Intelligent Monitoring in Intensive Care (MIMIC) II clinical database into a discrete multidimensional space, which was searched for measurement combinations and trends relevant to patient outcomes of interest. Patient trajectories through this space were then used to make outcome predictions. As a case study, we built AutoTriage, a patient stability prediction tool to be used for discharge recommendation. RESULTS: AutoTriage correctly identified 3 times as many stabilizing patients as existing tools and achieved an accuracy of 92.9% (95% CI: 91.6-93.9%), while maintaining 94.5% specificity. Analysis of AutoTriage parameters revealed that interdependencies between risk factors comprised the majority of each patient stability score. DISCUSSION: AutoTriage demonstrated an improvement in the sensitivity of existing stability prediction tools, while considering patient safety upon discharge. The relative contributions of risk factors indicated that time-series trends and measurement interdependencies are most important to stability prediction. CONCLUSION: Our results motivate the application of multidimensional analysis to other clinical problems and highlight the importance of risk factor trends and interdependencies in outcome prediction.
OBJECTIVE: We propose a computational framework for integrating diverse patient measurements into an aggregate health score and applying it to patient stability prediction. MATERIALS AND METHODS: We mapped retrospective patient data from the Multiparameter Intelligent Monitoring in Intensive Care (MIMIC) II clinical database into a discrete multidimensional space, which was searched for measurement combinations and trends relevant to patient outcomes of interest. Patient trajectories through this space were then used to make outcome predictions. As a case study, we built AutoTriage, a patient stability prediction tool to be used for discharge recommendation. RESULTS: AutoTriage correctly identified 3 times as many stabilizing patients as existing tools and achieved an accuracy of 92.9% (95% CI: 91.6-93.9%), while maintaining 94.5% specificity. Analysis of AutoTriage parameters revealed that interdependencies between risk factors comprised the majority of each patient stability score. DISCUSSION: AutoTriage demonstrated an improvement in the sensitivity of existing stability prediction tools, while considering patient safety upon discharge. The relative contributions of risk factors indicated that time-series trends and measurement interdependencies are most important to stability prediction. CONCLUSION: Our results motivate the application of multidimensional analysis to other clinical problems and highlight the importance of risk factor trends and interdependencies in outcome prediction.
Authors: Jacob Calvert; Thomas Desautels; Uli Chettipally; Christopher Barton; Jana Hoffman; Melissa Jay; Qingqing Mao; Hamid Mohamadlou; Ritankar Das Journal: Ann Med Surg (Lond) Date: 2016-05-10
Authors: Thomas Desautels; Jacob Calvert; Jana Hoffman; Qingqing Mao; Melissa Jay; Grant Fletcher; Chris Barton; Uli Chettipally; Yaniv Kerem; Ritankar Das Journal: Biomed Inform Insights Date: 2017-06-12
Authors: Thomas Desautels; Ritankar Das; Jacob Calvert; Monica Trivedi; Charlotte Summers; David J Wales; Ari Ercole Journal: BMJ Open Date: 2017-09-15 Impact factor: 2.692
Authors: Jacob Calvert; Qingqing Mao; Jana L Hoffman; Melissa Jay; Thomas Desautels; Hamid Mohamadlou; Uli Chettipally; Ritankar Das Journal: Ann Med Surg (Lond) Date: 2016-09-06
Authors: Thomas Desautels; Jacob Calvert; Jana Hoffman; Melissa Jay; Yaniv Kerem; Lisa Shieh; David Shimabukuro; Uli Chettipally; Mitchell D Feldman; Chris Barton; David J Wales; Ritankar Das Journal: JMIR Med Inform Date: 2016-09-30
Authors: Qingqing Mao; Melissa Jay; Jana L Hoffman; Jacob Calvert; Christopher Barton; David Shimabukuro; Lisa Shieh; Uli Chettipally; Grant Fletcher; Yaniv Kerem; Yifan Zhou; Ritankar Das Journal: BMJ Open Date: 2018-01-26 Impact factor: 2.692
Authors: Joost D J Plate; Rutger R van de Leur; Luke P H Leenen; Falco Hietbrink; Linda M Peelen; M J C Eijkemans Journal: BMC Med Res Methodol Date: 2019-10-26 Impact factor: 4.615