关键词: Blood cells Blood smear Deep learning Image recognition

Mesh : Pathology, Clinical / methods trends Image Processing, Computer-Assisted Blood Cells / microbiology parasitology pathology Malaria / diagnostic imaging Leukemia / diagnostic imaging Algorithms Machine Learning Blood Cell Count Humans

来  源:   DOI:10.1007/s10238-024-01379-z   PDF(Pubmed)

Abstract:
Traditional manual blood smear diagnosis methods are time-consuming and prone to errors, often relying heavily on the experience of clinical laboratory analysts for accuracy. As breakthroughs in key technologies such as neural networks and deep learning continue to drive digital transformation in the medical field, image recognition technology is increasingly being leveraged to enhance existing medical processes. In recent years, advancements in computer technology have led to improved efficiency in the identification of blood cells in blood smears through the use of image recognition technology. This paper provides a comprehensive summary of the methods and steps involved in utilizing image recognition algorithms for diagnosing diseases in blood smears, with a focus on malaria and leukemia. Furthermore, it offers a forward-looking research direction for the development of a comprehensive blood cell pathological detection system.
摘要:
传统的手工血涂片诊断方法耗时长,容易出错,通常在很大程度上依赖于临床实验室分析师的经验来保证准确性。随着神经网络和深度学习等关键技术的突破不断推动医疗领域的数字化转型,图像识别技术正越来越多地被利用来增强现有的医疗流程。近年来,计算机技术的进步通过使用图像识别技术提高了血液涂片中血细胞识别的效率。本文全面总结了利用图像识别算法诊断血涂片疾病的方法和步骤,重点是疟疾和白血病。此外,它为开发全面的血细胞病理检测系统提供了前瞻性的研究方向。
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