Predicting Mortality with Applied Machine Learning: Can We Get There?

There is growing interest in using AI-based algorithms to support clinician decision-making. An important consideration is how transparent complex algorithms can be for predictions, particularly with respect to imminent mortality in a hospital environment. Understanding the basis of predictions, the process used to generate models and recommendations, how to generalize models based on one patient population to another, and the role of oversight organizations such as the Food and Drug Administration are important topics. In this paper, we debate opposing positions regarding whether these algorithms are ‘ready yet’ for use today in clinical settings for physicians, patients and caregivers. We report voting results from participating audience members in attendance at the conference debate for each of these positions obtained real-time from a smartphone-based platform.

[1]  E. Patterson,et al.  Use Preferences for Continuous Cardiac and Respiratory Monitoring Systems in Hospitals: A Survey of Patients and Family Caregivers , 2018, Proceedings of the International Symposium of Human Factors and Ergonomics in Healthcare. International Symposium of Human Factors and Ergonomics in Healthcare.

[2]  Malrey Lee,et al.  The skin cancer classification using deep convolutional neural network , 2018, Multimedia Tools and Applications.

[3]  H. Chad Lane,et al.  Building Explainable Artificial Intelligence Systems , 2006, AAAI.

[4]  V. Montori,et al.  Missed opportunity? Caregiver participation in the clinical encounter. A videographic analysis. , 2014, Patient education and counseling.

[5]  Joachim Meyer,et al.  The Intricacies of User Adjustments of Alerting Thresholds , 2017, Hum. Factors.

[6]  Reducing Alert Fatigue for Comfort Care and Palliative Care Hospital Patients , 2019, Proceedings of the International Symposium on Human Factors and Ergonomics in Health Care.

[7]  Ying Tao Zhang,et al.  Usefulness of the heart-rate variability complex for predicting cardiac mortality after acute myocardial infarction , 2014, BMC Cardiovascular Disorders.

[8]  Theodore T. Allen,et al.  Design and analysis of variable fidelity experimentation applied to engine valve heat treatment process design , 2005 .