Automated RECOMIA AI-based total metabolic tumor volume in lymphoma - a retrospective study
Journal article, 2026

Background Increasing evidence suggests that total metabolic tumor volume (tMTV) measured before treatment in lymphoma patients undergoing [18F]fluorodeoxyglucose (FDG) PET/CT scans can predict prognosis. However, there is a lack of fast, reliable, and easy-to-perform multilesional segmentation tools with an urgent need to improve tMTV segmentation workflow in clinical practice. Here, we develop an artificial intelligence (AI)-based tool that automatically calculates tMTV in untreated lymphoma patients undergoing FDG PET/CT. The RECOMIA AI-based tool is a 3D U-Net convolutional neural network trained on a cohort of 1,500 lymphoma patients, mean age 52 years (range 10-88), 44% were female. The model was optimized to segment metabolically active tumors in the FDG PET/ CT scans, enabling automated tMTV measurements.The test group consisted of all untreated Hodgkin lymphoma (HL) patients and all Diffuse large B-cell lymphoma (DLBCL) patients who underwent FDG PET/CT at Sahlgrenska University Hospital between 2017-2018 and 2019-2022, respectively. There were 117 patients with mean age 50 years (range 7-90), 39% were female. Nine nuclear medicine physicians manually segmented lesions for tMTV calculations, with each patient independently segmented by two physicians. Results The median of the manual tMTV was 321 cm(3) (interquar tile range [IQR]: 92-689 cm(3)) and the median of the difference between two tMTV values segmented by different physicians for the same patient was 26 cm(3) (IQR: 9-86 cm(3)). In 85 of the 117 patients, one of two manual tMTV measurements was closer to the AI tMTV value than the second manual tMTV measurement made by another physician. In 15 of the remaining 32 patients, the difference between the AI tMTV and the manual tMTV was small (< 26 cm(3), the median difference between two manual tMTV values made on the same patient). Conclusion The results of this study show that the RECOMIA AI-based tool achieved segmentation similarity within the inter-observer variability of experienced nuclear medicine physicians in 85% (100/117) of untreated lymphoma patients. This demonstrates the feasibility of using AI to support physicians in quantifying tMTV for assessment of prognosis in clinical practice.

Staging

Convolutional neural networks

Haematological disease

FDG PET/CT

Quantification

Author

Johanna Mörk

Sahlgrenska University Hospital

May Sadik

University of Gothenburg

Jesus Lopez Urdaneta

Sahlgrenska University Hospital

Måns Larsson

Eigenvis AB

Malin Lewold

Lund University

Skåne University Hospital

Olof Enqvist

Chalmers, Electrical Engineering, Signal Processing and Biomedical Engineering

Sally F. Barrington

King's College London

Lars Edenbrandt

University of Gothenburg

Elin Trägårdh

Skåne University Hospital

Lund University

EJNMMI RESEARCH

2191-219X (ISSN)

Vol. 16 1 53

Subject Categories (SSIF 2025)

Hematology

Cancer and Oncology

Radiology and Medical Imaging

DOI

10.1186/s13550-026-01403-1

PubMed

41758385

More information

Latest update

5/29/2026