FNN for Diabetic Prediction Using Oppositional Whale Optimization Algorithm
Metadatos
Mostrar el registro completo del ítemAutor
Akhtar, Mohammad Amir Khusru; Pradhan, Dinesh K.; Kumar Chatterjee, Rajesh; Chakraborty, Falguni; Kumar, Mohit; Verma, Sahil; Khurma, Ruba Abu; García Arenas, María IsabelEditorial
IEEE
Materia
Feed forward neural network (FNN) Artificial intelligence Whale Optimization Algorithm (WOA)
Fecha
2024-02-12Referencia bibliográfica
Chatterjee, R., Akhtar, M. A. K., Pradhan, D. K., Chakraborty, F., Kumar, M., Verma, S., ... & García-Arenas, M. (2024). FNN for diabetic prediction using oppositional whale optimization algorithm. IEEE Access.
Patrocinador
Ministerio Español de Ciencia e Innovación under Grant PID2020-115570GB-C22, Grant PID2022-137461NB-C31, and Grant MCIN/AEI/10.13039/501100011033; Programa Operativo FEDER 2021-2027 under Grant C-ING-027-UGR23; Cátedra Fujitsu Tecnología para las Personas (UGR-Fujitsu)Resumen
The medical field is witnessing rapid adoption of artificial intelligence (AI) and machine
learning (ML), revolutionizing disease diagnosis and treatment management. Researchers explore how
AI and ML can optimize medical decision-making, promising to transform healthcare. Feed Forward
Neural Networks (FNN) are widely used to create predictive disease models, cross-validated by medical
experts. However, complex medical data like diabetes leads to multi-modal search spaces prone to local
minima, affecting optimal solutions. In this study, we focus on optimizing a diabetes dataset from the
Pima Indian community, evaluating decision-making performance in diabetes management. Employing
multimodal datasets, we compare various optimization algorithms, including the Whale Optimization
Algorithm (WOA) and Particle Swarm Optimization (PSO). The test results encompass essential metrics like
best-fit value, mean, median, and standard deviation to assess the impact of different optimization techniques.
The findings highlight the superiority of the Oppositional Whale Optimization Algorithm (OWOA) over
other methods employed in our research setup. This study demonstrates the immense potential of AI and
metaheuristic algorithms to revolutionize medical diagnosis and treatment approaches, paving the way
for future advancements in the healthcare landscape. Results reveal the superiority of OWOA over other
methods. AI and metaheuristics show tremendous potential in transforming medical diagnosis and treatment,
driving future healthcare advancements.