TY - JOUR
T1 - Artificial Intelligence and Radiomics
T2 - Clinical Applications for Patients with Advanced Melanoma Treated with Immunotherapy
AU - McGale, Jeremy
AU - Hama, Jakob
AU - Yeh, Randy
AU - Vercellino, Laetitia
AU - Sun, Roger
AU - Lopci, Egesta
AU - Ammari, Samy
AU - Dercle, Laurent
N1 - Publisher Copyright:
© 2023 by the authors.
PY - 2023/10/1
Y1 - 2023/10/1
N2 - Immunotherapy has greatly improved the outcomes of patients with metastatic melanoma. However, it has also led to new patterns of response and progression, creating an unmet need for better biomarkers to identify patients likely to achieve a lasting clinical benefit or experience immune-related adverse events. In this study, we performed a focused literature survey covering the application of artificial intelligence (AI; in the form of radiomics, machine learning, and deep learning) to patients diagnosed with melanoma and treated with immunotherapy, reviewing 12 studies relevant to the topic published up to early 2022. The most commonly investigated imaging modality was CT imaging in isolation (n = 9, 75.0%), while patient cohorts were most frequently recruited retrospectively and from single institutions (n = 7, 58.3%). Most studies concerned the development of AI tools to assist in prognostication (n = 5, 41.7%) or the prediction of treatment response (n = 6, 50.0%). Validation methods were disparate, with two studies (16.7%) performing no validation and equal numbers using cross-validation (n = 3, 25%), a validation set (n = 3, 25%), or a test set (n = 3, 25%). Only one study used both validation and test sets (n = 1, 8.3%). Overall, promising results have been observed for the application of AI to immunotherapy-treated melanoma. Further improvement and eventual integration into clinical practice may be achieved through the implementation of rigorous validation using heterogeneous, prospective patient cohorts.
AB - Immunotherapy has greatly improved the outcomes of patients with metastatic melanoma. However, it has also led to new patterns of response and progression, creating an unmet need for better biomarkers to identify patients likely to achieve a lasting clinical benefit or experience immune-related adverse events. In this study, we performed a focused literature survey covering the application of artificial intelligence (AI; in the form of radiomics, machine learning, and deep learning) to patients diagnosed with melanoma and treated with immunotherapy, reviewing 12 studies relevant to the topic published up to early 2022. The most commonly investigated imaging modality was CT imaging in isolation (n = 9, 75.0%), while patient cohorts were most frequently recruited retrospectively and from single institutions (n = 7, 58.3%). Most studies concerned the development of AI tools to assist in prognostication (n = 5, 41.7%) or the prediction of treatment response (n = 6, 50.0%). Validation methods were disparate, with two studies (16.7%) performing no validation and equal numbers using cross-validation (n = 3, 25%), a validation set (n = 3, 25%), or a test set (n = 3, 25%). Only one study used both validation and test sets (n = 1, 8.3%). Overall, promising results have been observed for the application of AI to immunotherapy-treated melanoma. Further improvement and eventual integration into clinical practice may be achieved through the implementation of rigorous validation using heterogeneous, prospective patient cohorts.
KW - artificial intelligence
KW - immune checkpoint inhibitor
KW - immunoPET
KW - immunotherapy
KW - medical imaging
KW - melanoma
KW - oncology
KW - radiomics
UR - http://www.scopus.com/inward/record.url?scp=85173830678&partnerID=8YFLogxK
U2 - 10.3390/diagnostics13193065
DO - 10.3390/diagnostics13193065
M3 - Review article
AN - SCOPUS:85173830678
SN - 2075-4418
VL - 13
JO - Diagnostics
JF - Diagnostics
IS - 19
M1 - 3065
ER -