Interpretable Neural Networks for Predicting Mortality Risk using Multi-modal Electronic Health Records

01/23/2019
by   Alvaro E. Ulloa Cerna, et al.
8

We present an interpretable neural network for predicting an important clinical outcome (1-year mortality) from multi-modal Electronic Health Record (EHR) data. Our approach builds on prior multi-modal machine learning models by now enabling visualization of how individual factors contribute to the overall outcome risk, assuming other factors remain constant, which was previously impossible. We demonstrate the value of this approach using a large multi-modal clinical dataset including both EHR data and 31,278 echocardiographic videos of the heart from 26,793 patients. We generated separate models for (i) clinical data only (CD) (e.g. age, sex, diagnoses and laboratory values), (ii) numeric variables derived from the videos, which we call echocardiography-derived measures (EDM), and (iii) CD+EDM+raw videos (pixel data). The interpretable multi-modal model maintained performance compared to non-interpretable models (Random Forest, XGBoost), and also performed significantly better than a model using a single modality (average AUC=0.82). Clinically relevant insights and multi-modal variable importance rankings were also facilitated by the new model, which have previously been impossible.

READ FULL TEXT

page 1

page 2

page 3

page 7

research
03/19/2023

PheME: A deep ensemble framework for improving phenotype prediction from multi-modal data

Detailed phenotype information is fundamental to accurate diagnosis and ...
research
05/04/2023

Learning Missing Modal Electronic Health Records with Unified Multi-modal Data Embedding and Modality-Aware Attention

Electronic Health Record (EHR) provides abundant information through var...
research
09/01/2021

Developing and validating multi-modal models for mortality prediction in COVID-19 patients: a multi-center retrospective study

The unprecedented global crisis brought about by the COVID-19 pandemic h...
research
07/16/2020

Prediction of the onset of cardiovascular diseases from electronic health records using multi-task gated recurrent units

In this work, we propose a multi-task recurrent neural network with atte...
research
08/26/2021

Network Module Detection from Multi-Modal Node Features with a Greedy Decision Forest for Actionable Explainable AI

Network-based algorithms are used in most domains of research and indust...
research
07/27/2020

Neural Temporal Point Processes For Modelling Electronic Health Records

The modelling of Electronic Health Records (EHRs) has the potential to d...
research
11/12/2020

Learning Inter-Modal Correspondence and Phenotypes from Multi-Modal Electronic Health Records

Non-negative tensor factorization has been shown a practical solution to...

Please sign up or login with your details

Forgot password? Click here to reset