Obesity Prediction with EHR Data: A deep learning approach with interpretable elements

12/05/2019
by   Mehak Gupta, et al.
0

Childhood obesity is a major public health challenge. Obesity in early childhood and adolescence can lead to obesity and other health problems in adulthood. Early prediction and identification of the children at a high risk of developing childhood obesity may help in engaging earlier and more effective interventions to prevent and manage this and other related health conditions. Existing predictive tools designed for childhood obesity primarily rely on traditional regression-type methods without exploiting longitudinal patterns of children's data (ignoring data temporality). In this paper, we present a machine learning model specifically designed for predicting future obesity patterns from generally available items on children's medical history. To do this, we have used a large unaugmented EHR (Electronic Health Record) dataset from a major pediatric health system in the US. We adopt a general LSTM (long short-term memory) network architecture for our model for training over dynamic (sequential) and static (demographic) EHR data. We have additionally included a set embedding and attention layers to compute the feature ranking of each timestamp and attention scores of each hidden layer corresponding to each input timestamp. These feature ranking and attention scores added interpretability at both the features and the timestamp-level.

READ FULL TEXT
research
12/05/2019

Obesity Prediction with EHR Data: A deep learning approach with interpretability

Childhood obesity is a major public health challenge. Obesity in early c...
research
12/05/2019

An Interpretable Prediction Model for Obesity Prediction using EHR Data

Childhood obesity is a major public health challenge. Obesity in early c...
research
02/03/2022

Who will Leave a Pediatric Weight Management Program and When? – A machine learning approach for predicting attrition patterns

Childhood obesity is a major public health concern. Multidisciplinary pe...
research
01/23/2022

Prioritizing municipal lead mitigation projects as a relaxed knapsack optimization: a method and case study

Lead pipe remediation budgets are limited and ought to maximize public h...
research
06/05/2023

Predicting malaria dynamics in Burundi using deep Learning Models

Malaria continues to be a major public health problem on the African con...
research
10/29/2021

Comparing Machine Learning-Centered Approaches for Forecasting Language Patterns During Frustration in Early Childhood

When faced with self-regulation challenges, children have been known the...
research
01/16/2019

Variable-sized input, character-level recurrent neural networks in lead generation: predicting close rates from raw user inputs

Predicting lead close rates is one of the most problematic tasks in the ...

Please sign up or login with your details

Forgot password? Click here to reset