利用混合起始-异常网络高效识别白细胞

Radhwan A. A. Saleh, Mustafa Ghaleb, Wasswa Shafik, H. Metin ERTUNÇ
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摘要

白细胞(WBC)是人体免疫系统对抗病菌、感染和其他各种人类病原体引发的传染病的重要微观卫士。及时、适当的白细胞检测和分类对于了解免疫系统的状况及其对各种病症的反馈、协助诊断和监测疾病具有决定性意义。然而,白细胞的人工分类既费力又费时,还容易出错,而自动化方法则成本高昂。在人工智能领域,深度学习(DL)方法已成为白细胞自动识别的一种有吸引力的选择。现有的用于白细胞分类的深度学习技术面临着一些局限性和计算困难,如过度拟合、可扩展性有限和设计复杂,经常与白细胞图像中的功能多样性作斗争,并且需要大量的计算资源。本研究推荐了一种巧妙的混合阈值-异常卷积语义网络(CNN),旨在应对现有 DL 版本中的限制。建议的网络结合了起始层和深度分离卷积层,可成功捕捉多个范围内的属性,从而最大限度地减少与模型复杂性和过拟合相关的问题。与传统的 CNN 设计相比,所提出的网络减少了所使用的层数,并提高了其功能移除能力,从而增强了需要多种属性能力的 WBC 分类性能。此外,我们还在白细胞图像分离和分类(LISC)、血细胞计数和检测(BCD)以及显微镜下白细胞分类(PBS-HCB)这三个广受认可的数据集上对所提出的模型进行了训练、验证和测试,证明了所提出模型的泛化、鲁棒性和优越性。在对各个数据集进行的五倍交叉验证测试中,该模型的平均准确率分别达到了 99.25%、99.65% 和 98.6%,超越了现有模型。该模型的稳健性和卓越性能在不同的数据集上都得到了验证,凸显了它作为医疗诊断中准确、高效的白细胞分类先进工具的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Efficient white blood cell identification with hybrid inception-xception network

Efficient white blood cell identification with hybrid inception-xception network

White blood cells (WBCs) are crucial microscopic defenders of the human immune system in combating transmittable conditions triggered by germs, infections, and various other human pathogens. Timely and appropriate WBC detection and classification are decisive for comprehending the immune system’s standing and its feedback to various pathologies, assisting in diagnosing and monitoring illness. Nevertheless, the manual classification of WBCs is strenuous, extensive, and prone to errors, while automated approaches can be cost-prohibitive. Within artificial intelligence, deep learning (DL) approaches have become an appealing option for automating WBC recognition. The existing DL techniques for WBC classification face several limitations and computational difficulties, such as overfitting, limited scalability, and design complexity, often battling with function variety in WBC images and requiring considerable computational resources. This research study recommends an ingenious hybrid inception-xception Convolutional Semantic network (CNN) designed to deal with constraints in existing DL versions. The proposed network incorporates inception and depth-separable convolution layers to successfully catch attributes across many ranges, therefore minimizing concerns related to model complexity and overfitting. In contrast to traditional CNN designs, the proposed network lessens the layers made use of and increases their function removal capacities, hence enhancing the performance of WBC classification, which needs a wide variety of attribute abilities. Furthermore, the proposed model was trained, validated and tested on three popular and widely recognized datasets, namely, Leukocyte Images for Segmentation and Classification (LISC), Blood Cell Count and Detection (BCCD), and Microscopic PBS (PBS-HCB), where it demonstrates the generalization and robustness and superiority of our proposed model. The model depicted an outstanding average accuracy rate of 99.25%, 99.65%, and 98.6% on a five-fold cross-validation test for the respective datasets, surpassing existing models as detailed. The model’s robustness and superior performance, validated across diverse datasets, underscore its potential as an advanced tool for accurate and efficient WBC classification in medical diagnostics.

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