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Browsing by Author "Rasool, Ghulam"
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Item Artificial Intelligence for Response Assessment in Neuro Oncology (AI-RANO), part 1: review of current advancements(Elsevier, 2024) Villanueva-Meyer, Javier E.; Bakas, Spyridon; Tiwari, Pallavi; Lupo, Janine M.; Calabrese, Evan; Davatzikos, Christos; Bi, Wenya Linda; Ismail, Marwa; Akbari, Hamed; Lohmann, Philipp; Booth, Thomas C.; Wiestler, Benedikt; Aerts, Hugo J. W. L.; Rasool, Ghulam; Tonn, Joerg C.; Nowosielski, Martha; Jain, Rajan; Colen, Rivka R.; Pati, Sarthak; Baid, Ujjwal; Vollmuth, Philipp; Macdonald, David; Vogelbaum, Michael A.; Chang, Susan M.; Huang, Raymond Y.; Galldiks, Norbert; Response Assessment in Neuro Oncology (RANO) group; Pathology and Laboratory Medicine, School of MedicineThe development, application, and benchmarking of artificial intelligence (AI) tools to improve diagnosis, prognostication, and therapy in neuro-oncology are increasing at a rapid pace. This Policy Review provides an overview and critical assessment of the work to date in this field, focusing on diagnostic AI models of key genomic markers, predictive AI models of response before and after therapy, and differentiation of true disease progression from treatment-related changes, which is a considerable challenge based on current clinical care in neuro-oncology. Furthermore, promising future directions, including the use of AI for automated response assessment in neuro-oncology, are discussed.Item Artificial Intelligence for Response Assessment in Neuro Oncology (AI-RANO), part 2: recommendations for standardisation, validation, and good clinical practice(Elsevier, 2024) Bakas, Spyridon; Vollmuth, Philipp; Galldiks, Norbert; Booth, Thomas C.; Aerts, Hugo J. W. L.; Bi, Wenya Linda; Wiestler, Benedikt; Tiwari, Pallavi; Pati, Sarthak; Baid, Ujjwal; Calabrese, Evan; Lohmann, Philipp; Nowosielski, Martha; Jain, Rajan; Colen, Rivka; Ismail, Marwa; Rasool, Ghulam; Lupo, Janine M.; Akbari, Hamed; Tonn, Joerg C.; Macdonald, David; Vogelbaum, Michael; Chang, Susan M.; Davatzikos, Christos; Villanueva-Meyer, Javier E.; Huang, Raymond Y.; Response Assessment in Neuro Oncology (RANO) group; Pathology and Laboratory Medicine, School of MedicineTechnological advancements have enabled the extended investigation, development, and application of computational approaches in various domains, including health care. A burgeoning number of diagnostic, predictive, prognostic, and monitoring biomarkers are continuously being explored to improve clinical decision making in neuro-oncology. These advancements describe the increasing incorporation of artificial intelligence (AI) algorithms, including the use of radiomics. However, the broad applicability and clinical translation of AI are restricted by concerns about generalisability, reproducibility, scalability, and validation. This Policy Review intends to serve as the leading resource of recommendations for the standardisation and good clinical practice of AI approaches in health care, particularly in neuro-oncology. To this end, we investigate the repeatability, reproducibility, and stability of AI in response assessment in neuro-oncology in studies on factors affecting such computational approaches, and in publicly available open-source data and computational software tools facilitating these goals. The pathway for standardisation and validation of these approaches is discussed with the view of trustworthy AI enabling the next generation of clinical trials. We conclude with an outlook on the future of AI-enabled neuro-oncology.