Reproducible and Interpretable Spiculation Quantification for Lung Cancer Screening
Wookjin Choi, Saad Nadeem, Sadegh Riyahi, Joseph O. Deasy, Allen, Tannenbaum, and Wei Lu

TL;DR
This paper introduces a reproducible, interpretable, parameter-free method for quantifying lung nodule spiculations using area distortion metrics, improving malignancy prediction accuracy in lung cancer screening.
Contribution
The study presents a novel spiculation quantification technique based on conformal spherical mapping, enhancing reproducibility and interpretability over prior methods.
Findings
Achieved AUC of 0.80 and 0.76 on external datasets, outperforming previous models.
Developed a semi-automatic segmentation process for lung nodules and attachments.
Found high correlation between the new spiculation measure and radiologists' scores.
Abstract
Spiculations are important predictors of lung cancer malignancy, which are spikes on the surface of the pulmonary nodules. In this study, we proposed an interpretable and parameter-free technique to quantify the spiculation using area distortion metric obtained by the conformal (angle-preserving) spherical parameterization. We exploit the insight that for an angle-preserved spherical mapping of a given nodule, the corresponding negative area distortion precisely characterizes the spiculations on that nodule. We introduced novel spiculation scores based on the area distortion metric and spiculation measures. We also semi-automatically segment lung nodule (for reproducibility) as well as vessel and wall attachment to differentiate the real spiculations from lobulation and attachment. A simple pathological malignancy prediction model is also introduced. We used the publicly-available…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment · Colorectal Cancer Screening and Detection
