DICOM Imaging Router: An Open Deep Learning Framework for Classification of Body Parts from DICOM X-ray Scans

08/14/2021
by   Hieu H. Pham, et al.
0

X-ray imaging in DICOM format is the most commonly used imaging modality in clinical practice, resulting in vast, non-normalized databases. This leads to an obstacle in deploying AI solutions for analyzing medical images, which often requires identifying the right body part before feeding the image into a specified AI model. This challenge raises the need for an automated and efficient approach to classifying body parts from X-ray scans. Unfortunately, to the best of our knowledge, there is no open tool or framework for this task to date. To fill this lack, we introduce a DICOM Imaging Router that deploys deep CNNs for categorizing unknown DICOM X-ray images into five anatomical groups: abdominal, adult chest, pediatric chest, spine, and others. To this end, a large-scale X-ray dataset consisting of 16,093 images has been collected and manually classified. We then trained a set of state-of-the-art deep CNNs using a training set of 11,263 images. These networks were then evaluated on an independent test set of 2,419 images and showed superior performance in classifying the body parts. Specifically, our best performing model achieved a recall of 0.982 (95 0.975-0.989) and a F1-score of 0.981 (95 less computation for inference (0.0295 second per image). Our external validity on 1,000 X-ray images shows the robustness of the proposed approach across hospitals. These remarkable performances indicate that deep CNNs can accurately and effectively differentiate human body parts from X-ray scans, thereby providing potential benefits for a wide range of applications in clinical settings. The dataset, codes, and trained deep learning models from this study will be made publicly available on our project website at https://vindr.ai/.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/18/2021

CheXbreak: Misclassification Identification for Deep Learning Models Interpreting Chest X-rays

A major obstacle to the integration of deep learning models for chest x-...
research
04/20/2018

Large Scale Automated Reading of Frontal and Lateral Chest X-Rays using Dual Convolutional Neural Networks

The MIMIC-CXR dataset is (to date) the largest publicly released chest x...
research
04/23/2023

Vision Transformer for Efficient Chest X-ray and Gastrointestinal Image Classification

Medical image analysis is a hot research topic because of its usefulness...
research
10/17/2022

Routine Usage of AI-based Chest X-ray Reading Support in a Multi-site Medical Supply Center

Research question: How can we establish an AI support for reading of che...
research
06/24/2021

VinDr-SpineXR: A deep learning framework for spinal lesions detection and classification from radiographs

Radiographs are used as the most important imaging tool for identifying ...
research
04/25/2023

Quantifying the Effect of Image Similarity on Diabetic Foot Ulcer Classification

This research conducts an investigation on the effect of visually simila...
research
10/13/2022

OOOE: Only-One-Object-Exists Assumption to Find Very Small Objects in Chest Radiographs

The accurate localization of inserted medical tubes and parts of human a...

Please sign up or login with your details

Forgot password? Click here to reset