AI-based software for lung nodule detection in chest X-rays -- Time for a second reader approach?
Susanne Ohlmann-Knafo, Naglis Ramanauskas, Sebastian Huettinger, Emil, Johnson Jeyakumar, Darius Baru\v{s}auskas, Neringa Bielskien\.e, Vytautas, Naujalis, Jonas Bialopetravi\v{c}ius, Jonas Ra\v{z}anskas, Art\=uras, Samuilis, J\=urat\.e Dementavi\v{c}ien\.e, Dirk Pickuth

TL;DR
This study evaluates AI as a second reader in lung nodule detection on chest X-rays, showing it improves sensitivity and can detect nodules missed by radiologists, potentially enhancing diagnostic accuracy and patient outcomes.
Contribution
It compares automated and assisted AI modes in lung nodule detection, demonstrating AI's ability to identify missed nodules and improve radiology workflow.
Findings
AI increased sensitivity by 12-14%
AI flagged missed nodules in many cases
AI modes improved diagnostic metrics
Abstract
Objectives: To compare artificial intelligence (AI) as a second reader in detecting lung nodules on chest X-rays (CXR) versus radiologists of two binational institutions, and to evaluate AI performance when using two different modes: automated versus assisted (additional remote radiologist review). Methods: The CXR public database (n = 247) of the Japanese Society of Radiological Technology with various types and sizes of lung nodules was analyzed. Eight radiologists evaluated the CXR images with regard to the presence of lung nodules and nodule conspicuity. After radiologist review, the AI software processed and flagged the CXR with the highest probability of missed nodules. The calculated accuracy metrics were the area under the curve (AUC), sensitivity, specificity, F1 score, false negative case number (FN), and the effect of different AI modes (automated/assisted) on the accuracy…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment · Advanced X-ray and CT Imaging
