Predicting Post-Operative Complications with Wearables

Author:

Zhang Jingwen1,Li Dingwen1,Dai Ruixuan1,Cos Heidy2,Williams Gregory A.2,Raper Lacey2,Hammill Chet W.2,Lu Chenyang1

Affiliation:

1. Washington University in St. Louis, Department of Computer Science and Engineering, St. Louis, Missouri, USA

2. Washington University in St. Louis, Department of Surgery, St. Louis, Missouri, USA

Abstract

Post-operative complications and hospital readmission are of great concern to surgical patients and health care providers. Wearable devices such as Fitbit wristbands enable long-term and non-intrusive monitoring of patients outside clinical environments. To build accurate predictive models based on wearable data, however, requires effective feature engineering to extract high-level features from time series data collected by the wearable sensors. This paper presents a pipeline for developing clinical predictive models based on wearable sensors. The core of the pipeline is a multi-level feature engineering framework for extracting high-level features from fine-grained time series data. The framework integrates a set of techniques tailored for noisy and incomplete wearable data collected in real-world clinical studies: (1) singular spectrum analysis for extracting high-level features from daily features over the course of the study; (2) a set of daily features that are resilient to missing data in wearable time series data; (3) a K-Nearest Neighbors (KNN) method for imputing short missing heart rate segments; (4) the integration of patients' clinical characteristics and wearable features. We evaluated the feature engineering approach and machine learning models in a clinical study involving 61 patients undergoing pancreatic surgery. Linear support vector machine (SVM) with integrated feature engineering achieved an AUROC of 0.8802 for predicting post-operative readmission or severe complications, which significantly outperformed the existing rule-based model used in clinical practice and other state-of-the-art feature engineering approaches.

Funder

Foundation for BJC Health Systems Innovation Lab

Fullgraf Foundation

Foundation for Barnes Jewish Hospital

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

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