Advancing blood cell detection and classification: performance evaluation of modern deep learning models.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Shilpa Choudhary, Sandeep Kumar, Pammi Sri Siddhaarth, Guntu Charitasri, Monali Gulhane, Nitin Rakesh, Feslin Anish Mon, Amal Al-Rasheed, Masresha Getahun, Ben Othman Soufiene
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Abstract

The detection and classification of blood cells are important in diagnosing and monitoring a variety of blood-related illnesses, such as anemia, leukemia, and infection, all of which may cause significant mortality. Accurate blood cell identification has a high clinical relevance in these patients because this would help to prevent false-negative diagnosis and to treat them in a timely and effective manner, thus reducing their clinical impacts.Our research aims to automate the process and eliminate manual efforts in blood cell counting. While our primary focus is on detection and classification, the output generated by our approach can be useful for disease prediction. This follows a two-step approach, where YOLO-based detection is first performed to locate blood cells, followed by classification using a hybrid CNN model to ensure accurate identification. We conducted a thorough and extensive comparison with other state-of-the-art models, including MobileNetV2, ShuffleNetV2, and DarkNet, for blood cell detection and classification. In terms of real-time performance, YOLOv10 outperforms other object detection models with better detection rates and classification accuracy. But MobileNetV2 and ShuffleNetV2 are more computationally efficient, which becomes more appropriate for resource-constrained environments. In contrast, DarkNet outperformed in terms of feature extraction performance, and the fine blood cell type classification. Additionally, an annotated blood cell data set was generated for this study. A diverse set of blood cell images with fine-grained annotations is contained in this dataset to make it useful for deep learning models training and evaluation. Because the present dataset will be an important resource for researchers and developers working on automatic blood cell detection and classification systems, we will make it publicly available under the open-access nature in order to accelerate the collaboration and progress in this field.

推进血细胞检测和分类:现代深度学习模型的性能评估。
血细胞的检测和分类对于诊断和监测各种血液相关疾病很重要,如贫血、白血病和感染,所有这些疾病都可能导致严重的死亡率。准确的血细胞鉴定对这些患者具有很高的临床意义,因为这有助于防止假阴性诊断并及时有效地治疗,从而减少其临床影响。我们的研究旨在实现血细胞计数过程的自动化,消除手工计数。虽然我们的主要重点是检测和分类,但我们的方法产生的输出对疾病预测也很有用。这遵循两步方法,首先进行基于yolo的检测以定位血细胞,然后使用混合CNN模型进行分类以确保准确识别。我们与其他最先进的模型进行了全面和广泛的比较,包括MobileNetV2, ShuffleNetV2和DarkNet,用于血细胞检测和分类。在实时性方面,YOLOv10以更好的检测率和分类准确率优于其他目标检测模型。但是MobileNetV2和ShuffleNetV2的计算效率更高,更适合于资源受限的环境。相比之下,DarkNet在特征提取性能和精细血细胞类型分类方面表现出色。此外,为本研究生成了一个注释的血细胞数据集。该数据集中包含一组具有细粒度注释的不同血细胞图像,使其对深度学习模型的训练和评估有用。由于目前的数据集将是研究自动血细胞检测和分类系统的研究人员和开发人员的重要资源,我们将在开放获取的性质下公开提供,以加速该领域的合作和进展。
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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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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