Improving Clinical Disease Sub‐typing and Future Events Prediction through a Chest CT based Deep Learning Approach

01/14/2021
by   Sumedha Singla, et al.
0

Purpose To develop and evaluate a deep learning (DL) approach to extract rich information from High‐Resolution Computed Tomography (HRCT) of patients with chronic obstructive pulmonary disease (COPD). Methods We develop a DL based model to learn a compact representation of a subject, which is predictive of COPD physiologic severity and other outcomes. Our DL model learned: 1) to extract informative regional image features from HRCT, 2) to adaptively weight these features and form an aggregate patient representation, and finally 3) to predict several COPD outcomes. The adaptive weights correspond to the regional lung contribution to the disease. We evaluate the model on 10,300 participants from the COPDGene cohort. Results Our model was strongly predictive of spirometric obstruction (r2= 0.67) and grouped 65.4% of subjects correctly and 89.1% within one stage of their GOLD severity stage. Our model achieved an accuracy of 41.7% and 52.8% in stratifying the population‐based on centrilobular (5‐grade) and paraseptal (3‐grade) emphysema severity score, respectively. For predicting future exacerbation, combining subjects’ representations from our model with their past exacerbation histories achieved an accuracy of 80.8% (area under the ROC curve of 0.73). For all‐cause mortality, in Cox‐regression analysis, we outperformed the BODE index improving the concordance metric (ours: 0.61 vs. BODE: 0.56). Conclusions Our model independently predicted spirometric obstruction, emphysema severity, exacerbation risk, and mortality from CT imaging alone. This method has potential applicability in both research and clinical practice.

READ FULL TEXT

page 1

page 33

page 34

page 35

research
11/19/2020

Predicting Patient COVID-19 Disease Severity by means of Statistical and Machine Learning Analysis of Blood Cell Transcriptome Data

Introduction: For COVID-19 patients accurate prediction of disease sever...
research
06/28/2018

Subject2Vec: Generative-Discriminative Approach from a Set of Image Patches to a Vector

We propose an attention-based method that aggregates local image feature...
research
07/06/2019

AMD Severity Prediction And Explainability Using Image Registration And Deep Embedded Clustering

We propose a method to predict severity of age related macular degenerat...
research
09/05/2023

Emphysema Subtyping on Thoracic Computed Tomography Scans using Deep Neural Networks

Accurate identification of emphysema subtypes and severity is crucial fo...
research
03/29/2020

Improving Emergency Department ESI Acuity Assignment Using Machine Learning and Clinical Natural Language Processing

Effective triage is critical to mitigating the effect of increased volum...
research
07/22/2022

Opportunistic hip fracture risk prediction in Men from X-ray: Findings from the Osteoporosis in Men (MrOS) Study

Osteoporosis is a common disease that increases fracture risk. Hip fract...

Please sign up or login with your details

Forgot password? Click here to reset