Annotations of Lung Abnormalities in the Shenzhen Chest X-ray Dataset for Computer-Aided Screening of Pulmonary Diseases

Author:

Yang FengORCID,Lu Pu Xuan,Deng Min,Wáng Yì Xiáng J.ORCID,Rajaraman SivaramakrishnanORCID,Xue Zhiyun,Folio Les R.,Antani Sameer K.ORCID,Jaeger StefanORCID

Abstract

Developments in deep learning techniques have led to significant advances in automated abnormality detection in radiological images and paved the way for their potential use in computer-aided diagnosis (CAD) systems. However, the development of CAD systems for pulmonary tuberculosis (TB) diagnosis is hampered by the lack of training data that is of good visual and diagnostic quality, of sufficient size, variety, and, where relevant, containing fine-region annotations. This study presents a collection of annotations/segmentations of pulmonary radiological manifestations that are consistent with TB in the publicly available and widely used Shenzhen chest X-ray (CXR) dataset made available by the U.S. National Library of Medicine and obtained via a research collaboration with No. 3. People’s Hospital Shenzhen, China. The goal of releasing these annotations is to advance the state of the art for image segmentation methods toward improving the performance of the fine-grained segmentation of TB-consistent findings in digital chest X-ray images. The annotation collection comprises the following: (1) annotation files in JavaScript Object Notation (JSON) format that indicate locations and shapes of 19 lung pattern abnormalities for 336 TB patients; (2) mask files saved in PNG format for each abnormality per TB patient; and (3) a comma-separated values (CSV) file that summarizes lung abnormality types and numbers per TB patient. To the best of our knowledge, this is the first collection of pixel-level annotations of TB-consistent findings in CXRs.

Publisher

MDPI AG

Subject

Information Systems and Management,Computer Science Applications,Information Systems

Reference9 articles.

1. Global Tuberculosis Report;World Health Organization (WHO),2021

2. Use of chest radiography in the 22 highest tuberculosis burden countries

3. Chest Radiography in Tuberculosis Detection-Summary of Current WHO Recommendations and Guidance on Programmatic Approaches;WHO Libr. Cat. Data,2016

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