Exploration of Fully-Automated Body Composition Analysis Using Routine CT-Staging of Lung Cancer Patients for Survival Prognosis.
AI-driven automated body composition analysis (BCA) may provide quantitative prognostic biomarkers derived from routine staging CTs. This two-centre study evaluates the prognostic value of these volumetric markers for overall survival in lung cancer patients.
Lung cancer cohorts from Hospital A (nโ=โ3345, median age 65, 86% NSCLC, 40% M1, 40% female) and B (nโ=โ1364, median age 66, 87% NSCLC, 37% M1, 38% female) underwent automated BCA of abdominal CTs ยฑ60โdays of primary diagnosis. A deep learning network segmented muscle, bone and adipose tissues (visceralโ=โVAT, subcutaneousโ=โSAT, intra-/intermuscularโ=โIMAT and totalโ=โTAT) to derive three markers: Sarcopenia Index (SIโ=โMuscle/Bone), Myosteatotic Fat Index (MFIโ=โIMAT/TAT) and Abdominal Fat Index (AFIโ=โVAT/SAT).
Kaplan-Meier survival analysis, Cox proportional hazards modelling and machine learning-based survival prediction were performed. A survival model including clinical data (BMI, ECOG, L3-SMI, -SATI, -VATI and -IMATI) was fitted on Hospital A data and validated on Hospital B data.
In nonmetastatic NSCLC, high SI predicted longer survival across centres for males (Hospital A: 24.6 vs. 46.0โmonths; Hospital B: 13.3 vs. 28.9โmonths; both pโ<โ0.001) and females (Hospital A: 37.9 vs. 53.6โmonths, pโ=โ0.008; Hospital B: 23.0 vs. 28.6โmonths, pโ=โ0.018). High MFI indicated reduced survival in males at both hospitals (Hospital A: 43.7 vs. 28.2โmonths; Hospital B: 28.8 vs. 14.3โmonths; both pโโคโ0.001) but showed center-dependent effects in females (significant only in Hospital A, pโ<โ0.01).
In metastatic disease, SI remained prognostic for males at both centres (pโ<โ0.05), while MFI was significant only in Hospital A (pโโคโ0.001) and AFI only in Hospital B (pโ=โ0.042). Multivariate Cox regression confirmed that higher SI was protective (A: HR 0.53, B: 0.59, pโโคโ0.001), while MFI was associated with shorter survival (A: HR 1.31, B: 1.12, pโ<โ0.01).
The multivariate survival model trained on Hospital A's data demonstrated prognostic differentiation of groups in internal (nโ=โ209, pโโคโ0.001) and external (Hospital B, nโ=โ361, pโ=โ0.044) validation, with SI feature importance (0.037) ranking below ECOG (0.082) and M-status (0.078), outperforming all other features including conventional L3-single-slice measurements. CT-based volumetric BCA provides prognostic biomarkers in lung cancer with varying significance by sex, disease stage and centre.
SI was the strongest prognostic marker, outperforming conventional L3-based measurements, while fat-related markers showed varying associations. Our multivariate model suggests that BCA markers, particularly SI, may enhance risk stratification in lung cancer, pending centre-specific and sex-specific validation.
Integration of these markers into clinical workflows could enable personalized care and targeted interventions for high-risk patients.