AI-Based Imaging Assessment of Body Composition in Oncology: A Step Toward Routine Clinical Practice Integration
Highlights
- AI-based body composition analysis may enable rapid, automated and reproducible assessment from routine imaging, overcoming the limitations of manual approaches.
- Despite strong prognostic evidence, its routine integration into oncology clinical practice remains limited.
- AI-based body composition analysis may support early risk stratification, guiding tailored lifestyle intervention and anticancer treatment personalization.
- Bridging the implementation gap will require protocols standardization, robust validation and careful consideration of regulatory and ethical aspects.
Abstract
1. Introduction
2. Bridging the Evidence–Practice Gap Through Automated Imaging-Based Body Composition Analysis
3. The Added Value of Body Composition Assessment in Oncology
4. From Innovation to Clinical Implementation
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
| BMI | Body Mass Index |
| BC | Body Composition |
| SM | Skeletal Muscle |
| VAT | Visceral Adipose Tissue |
| ASAT | Abdominal Subcutaneous Adipose Tissue |
| IMAT | Intramuscular Adipose Tissue |
| AI | Artificial Intelligence |
| CT | Computed Tomography |
| L3 | Third Lumbar vertebra |
| MRI | Magnetic Resonance Imaging |
| PET | Positron Emission Tomography |
| ONS | Oral Nutritional Supplements |
| RCT | Randomized Controlled Trial |
| AIOM | Italian Association of Medical Oncology |
References
- Potter, A.W.; Chin, G.C.; Looney, D.P.; Friedl, K.E. Defining Overweight and Obesity by Percent Body Fat Instead of Body Mass Index. J. Clin. Endocrinol. Metab. 2025, 110, e1103–e1107. [Google Scholar] [CrossRef]
- Cruz-Jentoft, A.J.; Bahat, G.; Bauer, J.; Boirie, Y.; Bruyère, O.; Cederholm, T.; Cooper, C.; Landi, F.; Rolland, Y.; Sayer, A.A.; et al. Sarcopenia: Revised European Consensus on Definition and Diagnosis. Age Ageing 2019, 48, 16–31. [Google Scholar] [CrossRef]
- Donini, L.M.; Busetto, L.; Bischoff, S.C.; Cederholm, T.; Ballesteros-Pomar, M.D.; Batsis, J.A.; Bauer, J.M.; Boirie, Y.; Cruz-Jentoft, A.J.; Dicker, D.; et al. Definition and Diagnostic Criteria for Sarcopenic Obesity: ESPEN and EASO Consensus Statement. Obes. Facts 2022, 15, 321–335. [Google Scholar] [CrossRef]
- Daenen, L.H.B.A.; van de Worp, W.R.P.H.; Rezaeifar, B.; de Bruijn, J.; Qiu, P.; Webster, J.M.; Peeters, S.; De Ruysscher, D.; Langen, R.C.J.; Wolfs, C.J.A.; et al. Towards a Fully Automatic Workflow for Investigating the Dynamics of Lung Cancer Cachexia during Radiotherapy Using Cone Beam Computed Tomography. Phys. Med. Biol. 2024, 69, 205005. [Google Scholar] [CrossRef]
- Pekar, M.; Kantor, M.; Balusik, J.; Hecko, J.; Branny, P. Beyond BMI: An Opinion on the Clinical Value of AI-Powered CT Body Composition Analysis. Biomol. Biomed. 2025, 25, 2586–2593. [Google Scholar] [CrossRef]
- Wang, F.; Zhen, H.; Wang, H.; Yu, K. Measurement of Sarcopenia in Lung Cancer Inpatients and Its Association with Frailty, Nutritional Risk, and Malnutrition. Front. Nutr. 2023, 10, 1143213. [Google Scholar] [CrossRef]
- Cereda, E.; Casirati, A.; Klersy, C.; Nardi, M.; Vandoni, G.; Agnello, E.; Crotti, S.; Masi, S.; Ferrari, A.; Pedrazzoli, P.; et al. Bioimpedance-Derived Body Composition Parameters Predict Mortality and Dose-Limiting Toxicity: The Multicenter ONCO-BIVA Study. ESMO Open 2024, 9, 103666. [Google Scholar] [CrossRef] [PubMed]
- Ansari, E.; Ganry, L.; Van Cann, E.M.; de Bree, R. Impact of Low Skeletal Muscle Mass on Postoperative Complications in Head and Neck Cancer Patients Undergoing Free Flap Reconstructive Surgery—A Systematic Review and Meta-Analysis. Oral Oncol. 2023, 147, 106598. [Google Scholar] [CrossRef] [PubMed]
- Borggreve, A.S.; den Boer, R.B.; van Boxel, G.I.; de Jong, P.A.; Veldhuis, W.B.; Steenhagen, E.; van Hillegersberg, R.; Ruurda, J.P. The Predictive Value of Low Muscle Mass as Measured on CT Scans for Postoperative Complications and Mortality in Gastric Cancer Patients: A Systematic Review and Meta-Analysis. J. Clin. Med. 2020, 9, 199. [Google Scholar] [CrossRef]
- Conde Frio, C.; Härter, J.; Santos, L.P.; Orlandi, S.P.; Gonzalez, M.C. Phase Angle, Physical Quality of Life and Functionality in Cancer Patients Undergoing Chemotherapy. Clin. Nutr. ESPEN 2023, 57, 331–336. [Google Scholar] [CrossRef] [PubMed]
- Arends, J.; Baracos, V.; Bertz, H.; Bozzetti, F.; Calder, P.C.; Deutz, N.E.P.; Erickson, N.; Laviano, A.; Lisanti, M.P.; Lobo, D.N.; et al. ESPEN Expert Group Recommendations for Action against Cancer-Related Malnutrition. Clin. Nutr. 2017, 36, 1187–1196. [Google Scholar] [CrossRef]
- Sheean, P.; Gonzalez, M.C.; Prado, C.M.; McKeever, L.; Hall, A.M.; Braunschweig, C.A. American Society for Parenteral and Enteral Nutrition Clinical Guidelines: The Validity of Body Composition Assessment in Clinical Populations. J. Parenter. Enter. Nutr. 2020, 44, 12–43. [Google Scholar] [CrossRef]
- Kiss, N.; Findlay, M.; Frowen, J.; Lewis, W.E.; Mills, J.; Singh, A.K.; Church, D.D.; Mey, J.T.; Peterson, S.; Aguzzi, K.; et al. Guidelines for Nutrition in Adults with Head and Neck Cancer: The American Society for Parenteral and Enteral Nutrition. J. Parenter. Enter. Nutr. 2026, 50, 274–338. [Google Scholar] [CrossRef]
- AIOM AIOM Guidelines: Nutritional Support in Patients Undergoing Active Treatment 2024. Available online: https://www.iss.it/documents/20126/8403839/LG_C0031_AIOM_Nutrizione.pdf/6c0c1ef2-7134-6f29-3df5-f5c3fb73ae85?t=1737626654639 (accessed on 30 March 2026).
- Bates, D.D.B.; Pickhardt, P.J. CT-Derived Body Composition Assessment as a Prognostic Tool in Oncologic Patients: From Opportunistic Research to Artificial Intelligence–Based Clinical Implementation. Am. J. Roentgenol. 2022, 219, 671–680. [Google Scholar] [CrossRef]
- Gehin, W.; Lambert, A.; Bibault, J.-E. AI-Based CT Assessment of Sarcopenia in Borderline Resectable Pancreatic Cancer: A Narrative Review of Clinical and Technical Perspectives. Comput. Biol. Med. 2025, 195, 110659. [Google Scholar] [CrossRef]
- Huang, Y.-T.; Tsai, Y.-S.; Lin, P.-C.; Yeh, Y.-M.; Hsu, Y.-T.; Wu, P.-Y.; Shen, M.-R. The Value of Artificial Intelligence-Assisted Imaging in Identifying Diagnostic Markers of Sarcopenia in Patients with Cancer. Dis. Markers 2022, 2022, 1819841. [Google Scholar] [CrossRef] [PubMed]
- Rai, R. Deep Learning in Image Segmentation for Cancer. J. Med. Radiat. Sci. 2024, 71, 505–508. [Google Scholar] [CrossRef] [PubMed]
- Yıldız Potter, İ.; Velasquez-Hammerle, M.V.; Nazarian, A.; Vaziri, A. Deep Learning-Based Body Composition Analysis for Cancer Patients Using Computed Tomographic Imaging. J. Imaging Inform. Med. 2024, 38, 2281–2293. [Google Scholar] [CrossRef]
- Delrieu, L.; Blanc, D.; Bouhamama, A.; Reyal, F.; Pilleul, F.; Racine, V.; Hamy, A.S.; Crochet, H.; Marchal, T.; Heudel, P.E. Automatic Deep Learning Method for Third Lumbar Selection and Body Composition Evaluation on CT Scans of Cancer Patients. Front. Nucl. Med. 2024, 3, 1292676. [Google Scholar] [CrossRef]
- Jung, M.; Diallo, T.D.; Scheef, T.; Reisert, M.; Rau, A.; Russe, M.F.; Bamberg, F.; Fichtner-Feigl, S.; Quante, M.; Weiss, J. Association Between Body Composition and Survival in Patients with Gastroesophageal Adenocarcinoma: An Automated Deep Learning Approach. JCO Clin. Cancer Inform. 2024, 8, e2300231. [Google Scholar] [CrossRef] [PubMed]
- Künnemann, M.; Römer, C.; Helfen, A.; Bleckmann, A.; Kemper, M.; Heindel, W.; Brix, T.J.; Forsting, M.; Haubold, J.; Opitz, M.; et al. Exploration of Fully-Automated Body Composition Analysis Using Routine CT-Staging of Lung Cancer Patients for Survival Prognosis. J. Cachexia Sarcopenia Muscle 2025, 16, e70021. [Google Scholar] [CrossRef]
- Hofmann, F.O.; Heiliger, C.; Tschaidse, T.; Jarmusch, S.; Auhage, L.A.; Aghamaliyev, U.; Gesenhues, A.B.; Schiergens, T.S.; Niess, H.; Ilmer, M.; et al. Validation of Body Composition Parameters Extracted via Deep Learning-Based Segmentation from Routine Computed Tomographies. Sci. Rep. 2025, 15, 11909. [Google Scholar] [CrossRef]
- Jungbauer, F.; Ludwig, S.; Huber, L.; Affolter, A.; Lammert, A.; Rotter, N.; Scherl, C.; Seiz, E.; Vahidi Noghani, F.; Schönberg, S.O.; et al. Muscle Matters: Automated CT-Based Body Composition Analysis Predicts Survival in Patients with Head and Neck Cancer Treated with Immunotherapy. Front. Oncol. 2026, 16, 1725892. [Google Scholar] [CrossRef] [PubMed]
- Borys, K.; Haubold, J.; Keyl, J.; Bali, M.A.; De Angelis, R.; Boni, K.B.; Coquelet, N.; Kohnke, J.; Baldini, G.; Kroll, L.; et al. Leveraging Sarcopenia Index by Automated CT Body Composition Analysis for Pan Cancer Prognostic Stratification. npj Digit. Med. 2025, 8, 611. [Google Scholar] [CrossRef]
- Burke, D.; Brown, M.; O’Neill, C.; Coleman, H.G.; Kuhn, T.; Schlesinger, S.; Prue, G.; Coyle, V. The Effect of Lifestyle Interventions on Sarcopenia in Advanced Colorectal Cancer: A Systematic Review. J. Geriatr. Oncol. 2025, 16, 102143. [Google Scholar] [CrossRef]
- Grupińska, J.; Budzyń, M.; Maćkowiak, K.; Brzeziński, J.J.; Kycler, W.; Leporowska, E.; Gryszczyńska, B.; Kasprzak, M.P.; Iskra, M.; Formanowicz, D. Beneficial Effects of Oral Nutritional Supplements on Body Composition and Biochemical Parameters in Women with Breast Cancer Undergoing Postoperative Chemotherapy: A Propensity Score Matching Analysis. Nutrients 2021, 13, 3549. [Google Scholar] [CrossRef]
- Schenk, J.M.; Gulati, R.; Beatty, S.J.; Plymate, S.; Lin, D.W.; Dash, A.; Porter, M.P.; VanDoren, M.; Wright, J.L.; Neuhouser, M.L. Reduced Adipose Tissue with Limited Loss of Lean Mass after Weight Loss: Results from the Prostate Cancer Active Lifestyle Study. JNCI J. Natl. Cancer Inst. 2025, 117, 2682–2686. [Google Scholar] [CrossRef]
- Liu, Y.-Z.; Su, P.-F.; Tai, A.-S.; Shen, M.-R.; Tsai, Y.-S. Artificial Intelligence-Driven Body Composition Analysis Enhances Chemotherapy Toxicity Prediction in Colorectal Cancer. Clin. Nutr. ESPEN 2025, 69, 696–702. [Google Scholar] [CrossRef]
- Besson, A.; Cao, K.; Mardinli, A.; Wirth, L.; Yeung, J.; Kokelaar, R.; Gibbs, P.; Reid, F.; Yeung, J.M. Artificial Intelligence Generated 3D Body Composition Predicts Dose Modifications in Patients Undergoing Neoadjuvant Chemotherapy for Rectal Cancer. J. Cancer Res. Clin. Oncol. 2025, 151, 168. [Google Scholar] [CrossRef]
- Assenat, E.; Ben Abdelghani, M.; Gourgou, S.; Perrier, H.; Akouz, F.K.; Desgrippes, R.; Galais, M.-P.; Janiszewski, C.; Mazard, T.; Rinaldi, Y.; et al. Impact of Lean Body Mass–Based Oxaliplatin Dose Calculation on Neurotoxicity in Adjuvant Treatment of Stage III Colon Cancer: Results of the Phase II Randomized LEANOX Trial. J. Clin. Oncol. 2025, 43, 2616–2627. [Google Scholar] [CrossRef]
- Isensee, F.; Jaeger, P.F.; Kohl, S.A.A.; Petersen, J.; Maier-Hein, K.H. NnU-Net: A Self-Configuring Method for Deep Learning-Based Biomedical Image Segmentation. Nat. Methods 2021, 18, 203–211. [Google Scholar] [CrossRef]
- Beetz, N.L.; Maier, C.; Segger, L.; Shnayien, S.; Trippel, T.D.; Lindow, N.; Bousabarah, K.; Westerhoff, M.; Fehrenbach, U.; Geisel, D. First PACS-integrated Artificial Intelligence-based Software Tool for Rapid and Fully Automatic Analysis of Body Composition from CT in Clinical Routine. CSM Clin. Rep. 2022, 7, 3–11. [Google Scholar] [CrossRef]
- Magudia, K.; Bridge, C.P.; Bay, C.P.; Babic, A.; Fintelmann, F.J.; Troschel, F.M.; Miskin, N.; Wrobel, W.C.; Brais, L.K.; Andriole, K.P.; et al. Population-Scale CT-Based Body Composition Analysis of a Large Outpatient Population Using Deep Learning to Derive Age-, Sex-, and Race-Specific Reference Curves. Radiology 2021, 298, 319–329. [Google Scholar] [CrossRef]
- Schweitzer, L.; Geisler, C.; Pourhassan, M.; Braun, W.; Glüer, C.-C.; Bosy-Westphal, A.; Müller, M.J. What Is the Best Reference Site for a Single MRI Slice to Assess Whole-Body Skeletal Muscle and Adipose Tissue Volumes in Healthy Adults? Am. J. Clin. Nutr. 2015, 102, 58–65. [Google Scholar] [CrossRef]
- Belfort, B.D.W.; Mohan, V.C.; Hollier, L.H. Ethics of Global Health Missions and the Role of Artificial Intelligence in the Facilitation of Care and Medical Education in Low and Middle-Income Countries. J. Craniofacial Surg. 2026, 37, 802–806. [Google Scholar] [CrossRef]
- Gundlack, J.; Negash, S.; Thiel, C.; Buch, C.; Schildmann, J.; Unverzagt, S.; Mikolajczyk, R.; Frese, T. Artificial Intelligence in Medical Care—Patients’ Perceptions on Caregiving Relationships and Ethics: A Qualitative Study. Health Expect. 2025, 28, e70216. [Google Scholar] [CrossRef]
| Requirement | Implementation Issue |
|---|---|
| Imaging variability | CT/MRI protocol, slice thickness and scanner-related variability may affect measurements. |
| Standardization | Consistent L3 selection and segmentation of SM, VAT, ASAT and IMAT are needed. |
| Local validation | AI models should be tested in the target population before clinical use. |
| Quality control | Visual overlays and expert review are needed to detect segmentation or slice-selection errors. |
| PACS/RIS integration | DICOM-compatible integration may allow automated analysis and reporting within routine radiology workflows. |
| Ethics and regulation | Transparency, privacy, bias assessment, accountability and clinical supervision are essential. |
| Clinical utility | Prospective studies should show that AI-based decisions improve relevant outcomes. |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
Share and Cite
Mattavelli, E.; Cotogni, P.; Caccialanza, R. AI-Based Imaging Assessment of Body Composition in Oncology: A Step Toward Routine Clinical Practice Integration. Healthcare 2026, 14, 1476. https://doi.org/10.3390/healthcare14111476
Mattavelli E, Cotogni P, Caccialanza R. AI-Based Imaging Assessment of Body Composition in Oncology: A Step Toward Routine Clinical Practice Integration. Healthcare. 2026; 14(11):1476. https://doi.org/10.3390/healthcare14111476
Chicago/Turabian StyleMattavelli, Elisa, Paolo Cotogni, and Riccardo Caccialanza. 2026. "AI-Based Imaging Assessment of Body Composition in Oncology: A Step Toward Routine Clinical Practice Integration" Healthcare 14, no. 11: 1476. https://doi.org/10.3390/healthcare14111476
APA StyleMattavelli, E., Cotogni, P., & Caccialanza, R. (2026). AI-Based Imaging Assessment of Body Composition in Oncology: A Step Toward Routine Clinical Practice Integration. Healthcare, 14(11), 1476. https://doi.org/10.3390/healthcare14111476

