Suboptimal Chest Radiography and Artificial Intelligence: The Problem and the Solution

Author:

Dasegowda Giridhar12ORCID,Kalra Mannudeep K.12,Abi-Ghanem Alain S.3ORCID,Arru Chiara D.4,Bernardo Monica56,Saba Luca7,Segota Doris8,Tabrizi Zhale9ORCID,Viswamitra Sanjaya10,Kaviani Parisa12ORCID,Karout Lina12,Dreyer Keith J.12

Affiliation:

1. Department of Radiology, Massachusetts General Hospital and Harvard Medical School, Boston, MA 02114, USA

2. Mass General Brigham Data Science Office (DSO), Boston, MA 02114, USA

3. Department of Diagnostic Radiology, American University of Beirut Medical Center, Beirut 11-0236, Lebanon

4. Department of Radiology, Azienda Ospedaliera G. Brotzu, 09134 Cagliari, Italy

5. Department of Radiology, Hospital Miguel Soeiro—UNIMED, Sorocaba 18052-210, Brazil

6. Department of Radiology, Pontificia University Catholic of São Paulo, São Paulo 05014-901, Brazil

7. Department of Radiology, Azienda Ospedaliera Universitaria di Cagliari, 09123 Cagliari, Italy

8. Medical Physics and Radiation Protection Department, Clinical Hospital Centre Rijeka, 51000 Rijeka, Croatia

9. Radiology Department, Iran University of Medical Sciences, Tehran 14535, Iran

10. Department of Radiodiagnosis, Sri Sathya Sai Institute of Higher Medical Sciences, Whitefield 560066, India

Abstract

Chest radiographs (CXR) are the most performed imaging tests and rank high among the radiographic exams with suboptimal quality and high rejection rates. Suboptimal CXRs can cause delays in patient care and pitfalls in radiographic interpretation, given their ubiquitous use in the diagnosis and management of acute and chronic ailments. Suboptimal CXRs can also compound and lead to high inter-radiologist variations in CXR interpretation. While advances in radiography with transitions to computerized and digital radiography have reduced the prevalence of suboptimal exams, the problem persists. Advances in machine learning and artificial intelligence (AI), particularly in the radiographic acquisition, triage, and interpretation of CXRs, could offer a plausible solution for suboptimal CXRs. We review the literature on suboptimal CXRs and the potential use of AI to help reduce the prevalence of suboptimal CXRs.

Publisher

MDPI AG

Subject

Clinical Biochemistry

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