An Intelligent Telediagnosis of Acute Lymphoblastic Leukemia using Histopathological Deep Learning

Md. Taufiqul Haque Khan Tusar, Md. Touhidul Islam, Abul Hasnat Sakil, M N Huda Nahid Khandaker, Md. Monir Hossain

Abstract


Leukemia, a global health challenge characterized by malignant blood cell proliferation, demands innovative diagnostic techniques due to its increasing incidence. Among leukemia types, Acute Lymphoblastic Leukemia (ALL) emerges as a particularly aggressive form affecting diverse age groups. This study proposes an advanced mechanized system utilizing Deep Neural Networks for detecting ALL blast cells in microscopic blood smear images. Achieving a remarkable accuracy of 97% using MobileNetV2, our system demonstrates high sensitivity and specificity in identifying multiple ALL sub-types. Furthermore, we introduce cutting-edge telediagnosis software facilitating real-time support for clinicians in promptly and accurately diagnosing various ALL subtypes from microscopic blood smear images. This research aims to enhance leukemia diagnosis efficiency, which is crucial for the timely intervention and managing this life-threatening condition.


Keywords


Acute Lymphoblastic Leukemia; Deep Learning; Image Processing; Healthcare; Telediagnosis.

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References


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DOI: https://doi.org/10.62411/jcta.10358

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