OncCalc automated deep learning model identified high cardiovascular risk with 83.6% accuracy and 91.9% sensitivity at CAC≥100 in NSCLC patients on routine chest CT.
Observational
Yes
Does an automated deep learning tool (OncCalc) accurately detect and quantify coronary artery calcification on routine ungated chest CTs in non-small cell lung cancer patients compared to expert radiologist manual segmentation?
329 patients (97 in training cohort, 232 in testing cohorts) including non-small cell lung cancer (NSCLC) patients and a negative control group, undergoing routine ungated, unenhanced chest CT scans.
Automated coronary artery calcification (CAC) assessment tool (OncCalc) using an optimized nnU-Net deep learning framework with TotalSegmentator post-processing.
Manual delineation of coronary calcifications by two clinical radiologists blinded to clinical data (ground truth).
Diagnostic performance metrics (accuracy, sensitivity, specificity, positive predictive value, negative predictive value, F1-score, kappa coefficient, and AUC) for stratifying patients into high cardiovascular disease risk groups using CAC thresholds of 100 and 400.surrogate
An optimized deep learning model can accurately perform opportunistic coronary artery calcification scoring on routine unenhanced chest CTs in NSCLC patients, enabling automated cardiovascular risk stratification without additional radiation or workload.
Cardiovascular disease (CVD) and non-small cell lung cancer (NSCLC) are the global leading causes of overall and cancer-related deaths, respectively. NSCLC patients have a higher CVD risk than the general population which is frequently underdiagnosed. Coronary artery calcification (CAC), a marker of CVD, is commonly detected on routinely acquired CT from NSCLC work-up but often not reported. We present an automated CAC assessment tool validated for NSCLC patients using a deep learning-based framework to provide a non-invasive CVD screening opportunity without incurring extra workload or radiation exposure. We trained nnU-Net models on ungated, unenhanced chest CTs (n = 97) from Stanford AIMI dataset, and tested them on three mutually independent datasets: (1) ungated unenhanced CTs from AIMI (n = 95), (2) attenuation correction CTs from PET-CT scans of NSCLC patients at our institution (ICHNT, n = 87; age 67.8 ± 10.1 years; M:F 174:113), and (3) CAC-negative scans from TCIA (n = 50); and used the best performing model to produce CAC segmentations, post-processed with TotalSegmentator, to stratify patients into CVD risk groups, informing the need for dedicated cardiac clinic assessment. For a CAC threshold of 100, the model achieved accuracy: 83.6%, sensitivity: 91.9%, specificity: 70.8%, positive predictive value (PPV): 82.9%, negative predictive value (NPV): 85.1%, F1-score: 0.87, kappa coefficient: 0.65 and Area Under the Receiver Operating Characteristic Curve (AUC) score of 0.899. For a threshold of 400, accuracy: 84.5%, sensitivity: 90.9%, specificity: 79.5%, PPV: 77.6%, NPV: 91.8%, F1-score: 0.84, and kappa coefficient: 0.69 as well as an AUC of 0.926. Our optimised deep learning model can benefit NSCLC patients by providing CVD risk information from their routine CT scans which may not acted upon otherwise, thus enabling a practical opportunistic screening solution for these patients.
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Anifowose et al. (Tue,) conducted a observational in Non-small cell lung cancer patients undergoing routine staging with unenhanced ungated attenuation correction CT as part of PET-CT scan (n=87). OncCalc automated coronary artery calcification (CAC) assessment using optimized nnU-Net deep learning model vs. Ground truth manual CAC scoring by clinical radiologists was evaluated on Accuracy of CAC score assessment and stratification at CAC thresholds 100 and 400 to identify high cardiovascular disease risk (Sensitivity 91.9%, Specificity 70.8%, PPV 82.9%, NPV 85.1%, F1-score 0.87, Kappa 0.65 at CAC≥100; Sensitivity 90.9%, Specificity 79.5%, PPV 77.6%, NPV 91.8%, F1-score 0.84, Kappa 0.69, AUC 0.926 at CAC≥400). OncCalc automated deep learning model identified high cardiovascular risk with 83.6% accuracy and 91.9% sensitivity at CAC≥100 in NSCLC patients on routine chest CT.
www.synapsesocial.com/papers/69a91cbed6127c7a504bfa45 — DOI: https://doi.org/10.1186/s12880-026-02252-z
Jubril Olayinka Anifowose
Zechen Li
Girija Agarwal
BMC Medical Imaging
Imperial College London
Imperial College Healthcare NHS Trust
NIHR Imperial Biomedical Research Centre
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