Litcius/Paper detail

Deep Learning and Machine Learning for Malaria Detection: Overview, Challenges and Future Directions

Imen Jdey, Ghazala Hcini, Hela Ltifi

2023International Journal of Information Technology & Decision Making42 citationsDOI

Abstract

Public health initiatives must be made using evidence-based decision-making to have the greatest impact. Machine learning algorithms are created to gather, store, process, and analyze data to provide knowledge and guide decisions. A crucial part of any surveillance system is image analysis. The communities of computer vision and machine learning have become curious about it as of late. This study uses a variety of machine learning, and image processing approaches to detect and forecast malarial illness. In our research, we discovered the potential of deep learning techniques as innovative tools with a broader applicability for malaria detection, which benefits physicians by assisting in the diagnosis of the condition. We investigate the common confinements of deep learning for computer frameworks and organizing, including the requirement for data preparation, preparation overhead, real-time execution, and explaining ability, and uncover future inquiries about bearings focusing on these constraints.

Topics & Concepts

Machine learningComputer scienceArtificial intelligenceDeep learningProcess (computing)Variety (cybernetics)Overhead (engineering)MalariaData scienceMedicineOperating systemImmunologyDigital Imaging for Blood DiseasesCOVID-19 diagnosis using AISmart Agriculture and AI
Deep Learning and Machine Learning for Malaria Detection: Overview, Challenges and Future Directions | Litcius