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MB-AI-His: Histopathological Diagnosis of Pediatric Medulloblastoma and its Subtypes via AI

机译:MB-AI-HIS:通过AI的儿科Medulloblastoma及其亚型的组织病理学诊断

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摘要

Medulloblastoma (MB) is a dangerous malignant pediatric brain tumor that could lead to death. It is considered the most common pediatric cancerous brain tumor. Precise and timely diagnosis of pediatric MB and its four subtypes (defined by the World Health Organization (WHO)) is essential to decide the appropriate follow-up plan and suitable treatments to prevent its progression and reduce mortality rates. Histopathology is the gold standard modality for the diagnosis of MB and its subtypes, but manual diagnosis via a pathologist is very complicated, needs excessive time, and is subjective to the pathologists’ expertise and skills, which may lead to variability in the diagnosis or misdiagnosis. The main purpose of the paper is to propose a time-efficient and reliable computer-aided diagnosis (CADx), namely MB-AI-His, for the automatic diagnosis of pediatric MB and its subtypes from histopathological images. The main challenge in this work is the lack of datasets available for the diagnosis of pediatric MB and its four subtypes and the limited related work. Related studies are based on either textural analysis or deep learning (DL) feature extraction methods. These studies used individual features to perform the classification task. However, MB-AI-His combines the benefits of DL techniques and textural analysis feature extraction methods through a cascaded manner. First, it uses three DL convolutional neural networks (CNNs), including DenseNet-201, MobileNet, and ResNet-50 CNNs to extract spatial DL features. Next, it extracts time-frequency features from the spatial DL features based on the discrete wavelet transform (DWT), which is a textural analysis method. Finally, MB-AI-His fuses the three spatial-time-frequency features generated from the three CNNs and DWT using the discrete cosine transform (DCT) and principal component analysis (PCA) to produce a time-efficient CADx system. MB-AI-His merges the privileges of different CNN architectures. MB-AI-His has a binary classification level for classifying among normal and abnormal MB images, and a multi-classification level to classify among the four subtypes of MB. The results of MB-AI-His show that it is accurate and reliable for both the binary and multi-class classification levels. It is also a time-efficient system as both the PCA and DCT methods have efficiently reduced the training execution time. The performance of MB-AI-His is compared with related CADx systems, and the comparison verified the powerfulness of MB-AI-His and its outperforming results. Therefore, it can support pathologists in the accurate and reliable diagnosis of MB and its subtypes from histopathological images. It can also reduce the time and cost of the diagnosis procedure which will correspondingly lead to lower death rates.
机译:Medulloblastoma(MB)是一种危险的恶性小儿脑肿瘤,可能导致死亡。它被认为是最常见的儿科癌症肿瘤。对儿科MB的精确和及时诊断(由世界卫生组织(WHO))定义为必不可少,以决定适当的后续计划和适当的治疗,以防止其进展和降低死亡率。组织病理学是诊断MB及其亚型的黄金标准模态,但通过病理学家手动诊断非常复杂,需要过度复杂,并且是对病理学家专业知识和技能的主观,这可能导致诊断或误诊的可变异性。本文的主要目的是提出时间效率和可靠的计算机辅助诊断(CADX),即MB-AI-HI,用于从组织病理学图像自动诊断儿科MB及其亚型。这项工作中的主要挑战是缺乏用于诊断儿科MB及其四个亚型以及有限相关工作的数据集。相关研究基于纹理分析或深度学习(DL)特征提取方法。这些研究使用单独的功能来执行分类任务。然而,MB-AI-HIS通过级联方式结合了DL技术和纹理分析特征提取方法的益处。首先,它使用三个DL卷积神经网络(CNNS),包括DENSENET-201,MOBILENET和RESET-50 CNN,以提取空间DL特征。接下来,它基于离散小波变换(DWT)提取来自空间DL特征的时频特征,这是一种纹理分析方法。最后,使用离散余弦变换(DCT)和主成分分析(PCA)来产生从三个CNN和DWT生成的三个空间时频特征,以产生时间效率的CADX系统。 MB-AI-HIS合并不同CNN架构的特权。 MB-AI-HIS具有二进制分类级别,用于在正常和异常MB图像之间进行分类,以及多分类级别,以分类MB的四个子类型。 MB-AI-HIS的结果表明,对于二进制和多级分类水平,它是准确可靠的。它也是一个时效的系统,因为PCA和DCT方法都有效地降低了训练执行时间。 MB-AI-HIS的表现与相关的CADX系统进行了比较,并且比较验证了MB-AI-HI-HIS及其优于结果的强大。因此,它可以支持病理学医师在组织病理学图像的准确且可靠地诊断MB及其亚型中。它还可以减少诊断程序的时间和成本,相应导致降低死亡率。

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