Deep Learning Predicts Hip Fracture using Confounding Patient and Healthcare Variables

11/08/2018
by   Marcus A. Badgeley, et al.
0

Hip fractures are a leading cause of death and disability among older adults. Hip fractures are also the most commonly missed diagnosis on pelvic radiographs. Computer-Aided Diagnosis (CAD) algorithms have shown promise for helping radiologists detect fractures, but the image features underpinning their predictions are notoriously difficult to understand. In this study, we trained deep learning models on 17,587 radiographs to classify fracture, five patient traits, and 14 hospital process variables. All 20 variables could be predicted from a radiograph (p < 0.05), with the best performances on scanner model (AUC=1.00), scanner brand (AUC=0.98), and whether the order was marked "priority" (AUC=0.79). Fracture was predicted moderately well from the image (AUC=0.78) and better when combining image features with patient data (AUC=0.86, p=2e-9) or patient data plus hospital process features (AUC=0.91, p=1e-21). The model performance on a test set with matched patient variables was significantly lower than a random test set (AUC=0.67, p=0.003); and when the test set was matched on patient and image acquisition variables, the model performed randomly (AUC=0.52, 95 variables were the main source of the model's predictive ability overall. We also used Naive Bayes to combine evidence from image models with patient and hospital data and found their inclusion improved performance, but that this approach was nevertheless inferior to directly modeling all variables. If CAD algorithms are inexplicably leveraging patient and process variables in their predictions, it is unclear how radiologists should interpret their predictions in the context of other known patient data. Further research is needed to illuminate deep learning decision processes so that computers and clinicians can effectively cooperate.

READ FULL TEXT

page 4

page 5

research
02/26/2019

Continual Prediction from EHR Data for Inpatient Acute Kidney Injury

Acute kidney injury (AKI) commonly occurs in hospitalized patients and c...
research
01/20/2023

DeepCOVID-Fuse: A Multi-modality Deep Learning Model Fusing Chest X-Radiographs and Clinical Variables to Predict COVID-19 Risk Levels

Propose: To present DeepCOVID-Fuse, a deep learning fusion model to pred...
research
07/02/2018

Confounding variables can degrade generalization performance of radiological deep learning models

Early results in using convolutional neural networks (CNNs) on x-rays to...
research
11/15/2019

Evaluating robustness of language models for chief complaint extraction from patient-generated text

Automated classification of chief complaints from patient-generated text...
research
07/13/2022

Deep Learning Discovery of Demographic Biomarkers in Echocardiography

Deep learning has been shown to accurately assess 'hidden' phenotypes an...
research
01/13/2020

An Adversarial Approach for the Robust Classification of Pneumonia from Chest Radiographs

While deep learning has shown promise in the domain of disease classific...
research
11/28/2017

Predicting Adolescent Suicide Attempts with Neural Networks

Though suicide is a major public health problem in the US, machine learn...

Please sign up or login with your details

Forgot password? Click here to reset