Breaking with Fixed Set Pathology Recognition through Report-Guided Contrastive Training

05/14/2022
by   Constantin Seibold, et al.
0

When reading images, radiologists generate text reports describing the findings therein. Current state-of-the-art computer-aided diagnosis tools utilize a fixed set of predefined categories automatically extracted from these medical reports for training. This form of supervision limits the potential usage of models as they are unable to pick up on anomalies outside of their predefined set, thus, making it a necessity to retrain the classifier with additional data when faced with novel classes. In contrast, we investigate direct text supervision to break away from this closed set assumption. By doing so, we avoid noisy label extraction via text classifiers and incorporate more contextual information. We employ a contrastive global-local dual-encoder architecture to learn concepts directly from unstructured medical reports while maintaining its ability to perform free form classification. We investigate relevant properties of open set recognition for radiological data and propose a method to employ currently weakly annotated data into training. We evaluate our approach on the large-scale chest X-Ray datasets MIMIC-CXR, CheXpert, and ChestX-Ray14 for disease classification. We show that despite using unstructured medical report supervision, we perform on par with direct label supervision through a sophisticated inference setting.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/24/2023

Prior-RadGraphFormer: A Prior-Knowledge-Enhanced Transformer for Generating Radiology Graphs from X-Rays

The extraction of structured clinical information from free-text radiolo...
research
09/25/2021

Weakly Supervised Contrastive Learning for Chest X-Ray Report Generation

Radiology report generation aims at generating descriptive text from rad...
research
10/07/2019

Automated Enriched Medical Concept Generation for Chest X-ray Images

Decision support tools that rely on supervised learning require large am...
research
05/15/2023

"Nothing Abnormal": Disambiguating Medical Reports via Contrastive Knowledge Infusion

Sharing medical reports is essential for patient-centered care. A recent...
research
03/24/2023

Local Contrastive Learning for Medical Image Recognition

The proliferation of Deep Learning (DL)-based methods for radiographic i...
research
04/09/2020

Query-Focused EHR Summarization to Aid Imaging Diagnosis

Electronic Health Records (EHRs) provide vital contextual information to...
research
10/28/2021

RadBERT-CL: Factually-Aware Contrastive Learning For Radiology Report Classification

Radiology reports are unstructured and contain the imaging findings and ...

Please sign up or login with your details

Forgot password? Click here to reset