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Review
. 2025 Jan;42(1):CBM230360.
doi: 10.3233/CBM-230360. Epub 2024 Feb 6.

Radiomics and artificial intelligence for risk stratification of pulmonary nodules: Ready for primetime?

Affiliations
Review

Radiomics and artificial intelligence for risk stratification of pulmonary nodules: Ready for primetime?

Roger Y Kim. Cancer Biomark. 2025 Jan.

Abstract

Pulmonary nodules are ubiquitously found on computed tomography (CT) imaging either incidentally or via lung cancer screening and require careful diagnostic evaluation and management to both diagnose malignancy when present and avoid unnecessary biopsy of benign lesions. To engage in this complex decision-making, clinicians must first risk stratify pulmonary nodules to determine what the best course of action should be. Recent developments in imaging technology, computer processing power, and artificial intelligence algorithms have yielded radiomics-based computer-aided diagnosis tools that use CT imaging data including features invisible to the naked human eye to predict pulmonary nodule malignancy risk and are designed to be used as a supplement to routine clinical risk assessment. These tools vary widely in their algorithm construction, internal and external validation populations, intended-use populations, and commercial availability. While several clinical validation studies have been published, robust clinical utility and clinical effectiveness data are not yet currently available. However, there is reason for optimism as ongoing and future studies aim to target this knowledge gap, in the hopes of improving the diagnostic process for patients with pulmonary nodules.

Keywords: Radiomics; artificial intelligence; lung cancer; pulmonary nodule; risk stratification.

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Conflict of interest statement

Conflict of interestNo relevant financial conflicts of interest to disclose.

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