Explainable Artificial Intelligence and Deep Learning Methods for the Detection of Sickle Cell by Capturing the Digital Images of Blood Smears

Information Pub Date : 2024-07-12 DOI:10.3390/info15070403
N. Goswami, Niranajana Sampathila, G. M. Bairy, Anushree Goswami, Dhruva Darshan Brp Siddarama, S. Belurkar
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Abstract

A digital microscope plays a crucial role in the better and faster diagnosis of an abnormality using various techniques. There has been significant development in this domain of digital pathology. Sickle cell disease (SCD) is a genetic disorder that affects hemoglobin in red blood cells. The traditional method for diagnosing sickle cell disease involves preparing a glass slide and viewing the slide using the eyepiece of a manual microscope. The entire process thus becomes very tedious and time consuming. This paper proposes a semi-automated system that can capture images based on a predefined program. It has an XY stage for moving the slide horizontally or vertically and a Z stage for focus adjustments. The case study taken here is of SCD. The proposed hardware captures SCD slides, which are further used to classify them with respect to normal. They are processed using deep learning models such as Darknet-19, ResNet50, ResNet18, ResNet101, and GoogleNet. The tested models demonstrated strong performance, with most achieving high metrics across different configurations varying with an average of around 97%. In the future, this semi-automated system will benefit pathologists and can be used in rural areas, where pathologists are in short supply.
通过捕捉血涂片数字图像检测镰状细胞的可解释人工智能和深度学习方法
数码显微镜在利用各种技术更好更快地诊断异常方面发挥着至关重要的作用。数字病理学在这一领域取得了长足的发展。镰状细胞病(SCD)是一种影响红细胞血红蛋白的遗传性疾病。诊断镰状细胞病的传统方法包括准备玻璃载玻片,然后用手动显微镜的目镜观察载玻片。因此,整个过程变得非常繁琐和耗时。本文提出了一种半自动系统,可根据预定程序捕捉图像。它有一个用于水平或垂直移动载玻片的 XY 平台和一个用于调整焦距的 Z 平台。这里的案例研究是关于 SCD 的。拟议的硬件可捕获 SCD 幻灯片,并进一步将其与正常照片进行分类。这些幻灯片使用 Darknet-19、ResNet50、ResNet18、ResNet101 和 GoogleNet 等深度学习模型进行处理。经过测试的模型表现出很强的性能,大多数模型在不同配置下都达到了很高的指标,平均约为 97%。未来,这种半自动化系统将使病理学家受益,并可用于病理学家短缺的农村地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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