Litcius/Paper detail

AIDMAN: An AI-based object detection system for malaria diagnosis from smartphone thin-blood-smear images

Ruicun Liu, Tuoyu Liu, Tingting Dan, Shan Yang, Yanbing Li, Boyu Luo, Yingtan Zhuang, X. Fan, Xianchao Zhang, Hongmin Cai, Yue Teng

2023Patterns47 citationsDOIOpen Access PDF

Abstract

Malaria is a significant public health concern, with ∼95% of cases occurring in Africa, but accurate and timely diagnosis is problematic in remote and low-income areas. Here, we developed an artificial intelligence-based object detection system for malaria diagnosis (AIDMAN). In this system, the YOLOv5 model is used to detect cells in a thin blood smear. An attentional aligner model (AAM) is then applied for cellular classification that consists of multi-scale features, a local context aligner, and multi-scale attention. Finally, a convolutional neural network classifier is applied for diagnosis using blood-smear images, reducing interference caused by false positive cells. The results demonstrate that AIDMAN handles interference well, with a diagnostic accuracy of 98.62% for cells and 97% for blood-smear images. The prospective clinical validation accuracy of 98.44% is comparable to that of microscopists. AIDMAN shows clinically acceptable detection of malaria parasites and could aid malaria diagnosis, especially in areas lacking experienced parasitologists and equipment.

Topics & Concepts

MalariaBlood smearArtificial intelligenceConvolutional neural networkContext (archaeology)Computer scienceDiagnosis of malariaObject detectionMedicineComputer visionPattern recognition (psychology)PathologyPlasmodium falciparumGeographyArchaeologyDigital Imaging for Blood DiseasesMosquito-borne diseases and controlSmart Agriculture and AI