Towards Clinical Practice in CT-Based Pulmonary Disease Screening: An Efficient and Reliable Framework
Qian Shao, Bang Du, Yixuan Wu, Zepeng Li, Qiyuan Chen, Qianqian Tang, Jian Wu, Jintai Chen, Hongxia Xu

TL;DR
This paper introduces an efficient framework for CT-based pulmonary disease screening that reduces computational costs while maintaining high diagnostic accuracy, by selecting representative slices and quantifying uncertainty in ambiguous cases.
Contribution
The paper presents a novel Cluster-based Sub-Sampling method and an Ambiguity-aware Uncertainty Quantification mechanism to improve efficiency and reliability of CT analysis for pulmonary disease screening.
Findings
Achieves over 90% accuracy and recall on public datasets.
Reduces processing time by more than 60%.
Maintains diagnostic performance comparable to full-volume analysis.
Abstract
Deep learning models for pulmonary disease screening from Computed Tomography (CT) scans promise to alleviate the immense workload on radiologists. Still, their high computational cost, stemming from processing entire 3D volumes, remains a major barrier to widespread clinical adoption. Current sub-sampling techniques often compromise diagnostic integrity by introducing artifacts or discarding critical information. To overcome these limitations, we propose an Efficient and Reliable Framework (ERF) that fundamentally improves the practicality of automated CT analysis. Our framework introduces two core innovations: (1) A Cluster-based Sub-Sampling (CSS) method that efficiently selects a compact yet comprehensive subset of CT slices by optimizing for both representativeness and diversity. By integrating an efficient k-nearest neighbor search with an iterative refinement process, CSS…
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Taxonomy
TopicsLung Cancer Diagnosis and Treatment · Medical Imaging and Pathology Studies · Atomic and Subatomic Physics Research
