Artificial intelligence in immunotherapy PET/SPECT imaging Review


Authors: McGale, J. P.; Chen, D. L.; Trebeschi, S.; Farwell, M. D.; Wu, A. M.; Cutler, C. S.; Schwartz, L. H.; Dercle, L.
Review Title: Artificial intelligence in immunotherapy PET/SPECT imaging
Abstract: Objective: Immunotherapy has dramatically altered the therapeutic landscape for oncology, but more research is needed to identify patients who are likely to achieve durable clinical benefit and those who may develop unacceptable side effects. We investigated the role of artificial intelligence in PET/SPECT-guided approaches for immunotherapy-treated patients. Methods: We performed a scoping review of MEDLINE, CENTRAL, and Embase databases using key terms related to immunotherapy, PET/SPECT imaging, and AI/radiomics through October 12, 2022. Results: Of the 217 studies identified in our literature search, 24 relevant articles were selected. The median (interquartile range) sample size of included patient cohorts was 63 (157). Primary tumors of interest were lung (n = 14/24, 58.3%), lymphoma (n = 4/24, 16.7%), or melanoma (n = 4/24, 16.7%). A total of 28 treatment regimens were employed, including anti-PD-(L)1 (n = 13/28, 46.4%) and anti-CTLA-4 (n = 4/28, 14.3%) monoclonal antibodies. Predictive models were built from imaging features using univariate radiomics (n = 7/24, 29.2%), radiomics (n = 12/24, 50.0%), or deep learning (n = 5/24, 20.8%) and were most often used to prognosticate (n = 6/24, 25.0%) or describe tumor phenotype (n = 5/24, 20.8%). Eighteen studies (75.0%) performed AI model validation. Conclusion: Preliminary results suggest broad potential for the application of AI-guided immunotherapy management after further validation of models on large, prospective, multicenter cohorts. Clinical relevance statement: This scoping review describes how artificial intelligence models are built to make predictions based on medical imaging and explores their application specifically in the PET and SPECT examination of immunotherapy-treated cancers. Key Points: • Immunotherapy has drastically altered the cancer treatment landscape but is known to precipitate response patterns that are not accurately accounted for by traditional imaging methods. • There is an unmet need for better tools to not only facilitate in-treatment evaluation but also to predict, a priori, which patients are likely to achieve a good response with a certain treatment as well as those who are likely to develop side effects. • Artificial intelligence applied to PET/SPECT imaging of immunotherapy-treated patients is mainly used to make predictions about prognosis or tumor phenotype and is built from baseline, pre-treatment images. Further testing is required before a true transition to clinical application can be realized. © The Author(s), under exclusive licence to European Society of Radiology 2024.
Keywords: adult; major clinical study; review; rituximab; positron emission tomography; neoplasm; neoplasms; phenotype; ipilimumab; cancer immunotherapy; melanoma; cohort analysis; diagnostic imaging; retrospective study; lung tumor; immunology; immunotherapy; systematic review; artificial intelligence; lymphoma; positron-emission tomography; image processing; therapy; tomography, emission-computed, single-photon; tumor microenvironment; process development; single photon emission computed tomography; procedures; cancer prognosis; single-photon emission computed tomography; predictive model; humans; human; male; female; deep learning; radiomics
Journal Title: European Radiology
Volume: 34
Issue: 9
ISSN: 0938-7994
Publisher: Springer  
Date Published: 2024-09-01
Start Page: 5829
End Page: 5841
Language: English
DOI: 10.1007/s00330-024-10637-3
PUBMED: 38355986
PROVIDER: scopus
DOI/URL:
Notes: Source: Scopus
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  1. Lawrence H Schwartz
    307 Schwartz