Machine Learning Predicts Adequacy of Rapid On-site Evaluation in Fine Needle Aspirations in Lung Cancer Cytology.
Journal:
The American journal of pathology
Published Date:
Mar 19, 2026
Abstract
Lung cancer is projected to become the leading cause of cancer-related mortality in both smoking and nonsmoking populations. Rapid on-site evaluation (ROSE) of fine needle aspiration specimens is essential for timely diagnosis and procedural decision-making during lung cancer assessment. A machine learning pipeline was developed for cell-based adequacy assessment and lesion detection that integrates automated cell detection, convolutional neural network-based cell classification, and slide-level aggregation using a random forest model. On held-out test data, binary classifiers for lymphocytes and tumor cells achieved accuracies of 91.5% and 92.7% with recalls of 92.6% and 93.1%, respectively. The end-to-end ROSE system demonstrated class accuracies of 82% to 85%, comparable with human cytologist performance, and a lesion-focused classifier reached a recall of 92.0%. These findings indicate that machine learning-based cell analysis can support ROSE by expediting adequacy assessment and improving diagnostic yield during transbronchial needle aspiration procedures.
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