Modeling Using Mathematics on Immune Deficiency Lymphoblastic Leukemia (IDLL)
Keywords:
IDLL, Mathematical Model, Transparency etc.Abstract
More than 12 million cases and more than 9.5 million deaths due to Immune Lymphoblastic Leukemia (ILL) disease were reported worldwide by the end of 2023. More than .30 million cases and more than .39 deaths have been reported in India. Physicians and Surgeons are working on a number of conceptual, theoretical or mathematical modelling techniques in the battle against Immune Deficiency Lymphoblastic Leukemia (IDLL) Protocol: This systematic review aims to provide a comprehensive review of published mathematical models on ALL in India and the concepts behind the development of mathematical models on IDLL, including assumptions, modelling techniques, and data inputs. Initially, related keywords and their synonyms will be searched in the Global Literature on this disease database managed by World Health Organisation (WHO).The studies will be selected for their quality, transparency, and ethical aspects, using the Overview, Design concepts, Details (ODD) protocol and International Society for IDLL.
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