AI-based body composition analysis of CT data has the potential to predict disease course in patients with multiple myeloma.
The aim of this study was to evaluate the benefit of a volumetric AI-based body composition analysis (BCA) algorithm in multiple myeloma (MM). Therefore, a retrospective monocentric cohort of 91 MM patients was analyzed. The BCA algorithm, powered by a convolutional neural network, quantified tissue compartments and bone density based on routine CT scans. Correlations between BCA data and demographic/clinical parameters were investigated. BCA-endotypes were identified and survival rates were compared between BCA-derived patient clusters. Patients with high-risk cytogenetics exhibited elevated cardiac marker index values. Across Revised-International Staging System (R-ISS) categories, BCA parameters did not show significant differences. However, both subcutaneous and total adipose tissue volumes were significantly lower in patients with progressive disease or death during follow-up compared to patients without progression. Cluster analysis revealed two distinct BCA-endotypes, with one group displaying significantly better survival. Furthermore, a combined model composed of clinical parameters and BCA data demonstrated a higher predictive capability for disease progression compared to models based solely on high-risk cytogenetics or R-ISS. These findings underscore the potential of BCA to improve patient stratification and refining prognostic models in MM.
Authors
Wegner Wegner, Sieren Sieren, Grasshoff Grasshoff, Berkel Berkel, Rowold Rowold, Röttgerding Röttgerding, Khalil Khalil, Mogadas Mogadas, Nensa Nensa, Hosch Hosch, Riemekasten Riemekasten, Hamm Hamm, von Bubnoff von Bubnoff, Barkhausen Barkhausen, Kloeckner Kloeckner, Khandanpour Khandanpour, Leitner Leitner
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