Improving the delivery of palliative care through predictive modeling and healthcare informatics

Author:

Murphree Dennis H12ORCID,Wilson Patrick M1,Asai Shusaku W1,Quest Daniel J3,Lin Yaxiong3,Mukherjee Piyush3,Chhugani Nirmal3,Strand Jacob J4,Demuth Gabriel1,Mead David3,Wright Brian3,Harrison Andrew5,Soleimani Jalal5,Herasevich Vitaly5,Pickering Brian W5,Storlie Curtis B12

Affiliation:

1. Department of Health Sciences Research, Mayo Clinic, Rochester, Minnesota, USA

2. Mayo Clinic Robert D. and Patricia E. Kern Center for the Science of Health Care Delivery, Mayo Clinic, Rochester, Minnesota, USA

3. Information Technology, Mayo Clinic, Rochester, Minnesota, USA

4. Division of Palliative Care, Department of Internal Medicine, Mayo Clinic, Rochester, Minnesota, USA

5. Department of Anesthesiology, Mayo Clinic, Rochester, Minnesota, USA

Abstract

Abstract Objective Access to palliative care (PC) is important for many patients with uncontrolled symptom burden from serious or complex illness. However, many patients who could benefit from PC do not receive it early enough or at all. We sought to address this problem by building a predictive model into a comprehensive clinical framework with the aims to (i) identify in-hospital patients likely to benefit from a PC consult, and (ii) intervene on such patients by contacting their care team. Materials and Methods Electronic health record data for 68 349 inpatient encounters in 2017 at a large hospital were used to train a model to predict the need for PC consult. This model was published as a web service, connected to institutional data pipelines, and consumed by a downstream display application monitored by the PC team. For those patients that the PC team deems appropriate, a team member then contacts the patient’s corresponding care team. Results Training performance AUC based on a 20% holdout validation set was 0.90. The most influential variables were previous palliative care, hospital unit, Albumin, Troponin, and metastatic cancer. The model has been successfully integrated into the clinical workflow making real-time predictions on hundreds of patients per day. The model had an “in-production” AUC of 0.91. A clinical trial is currently underway to assess the effect on clinical outcomes. Conclusions A machine learning model can effectively predict the need for an inpatient PC consult and has been successfully integrated into practice to refer new patients to PC.

Funder

Mayo Clinic Robert D. and Patricia E. Kern Center for the Science of Health Care Delivery

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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