Ghazvinian Zanjani Farhad, Zinger Svitlana, Piepers Bastian, Mahmoudpour Saeed, Schelkens Peter, de With Peter H N
Eindhoven University of Technology, SPS-VCA, Eindhoven, The Netherlands.
Barco NV, Healthcare Division, Kortrijk, Belgium.
J Med Imaging (Bellingham). 2019 Apr;6(2):027501. doi: 10.1117/1.JMI.6.2.027501. Epub 2019 Apr 24.
The availability of massive amounts of data in histopathological whole-slide images (WSIs) has enabled the application of deep learning models and especially convolutional neural networks (CNNs), which have shown a high potential for improvement in cancer diagnosis. However, storage and transmission of large amounts of data such as gigapixel histopathological WSIs are challenging. Exploiting lossy compression algorithms for medical images is controversial but, as long as the clinical diagnosis is not affected, is acceptable. We study the impact of JPEG 2000 compression on our proposed CNN-based algorithm, which has produced performance comparable to that of pathologists and which was ranked second place in the CAMELYON17 challenge. Detecting tumor metastases in hematoxylin and eosin-stained tissue sections of breast lymph nodes is evaluated and compared with the pathologists' diagnoses in three different experimental setups. Our experiments show that the CNN model is robust against compression ratios up to 24:1 when it is trained on uncompressed high-quality images. We demonstrate that a model trained on lower quality images-i.e., lossy compressed images-depicts a classification performance that is significantly improved for the corresponding compression ratio. Moreover, it is also observed that the model performs equally well on all higher-quality images. These properties will help to design cloud-based computer-aided diagnosis (CAD) systems, e.g., telemedicine that employ deep CNN models that are more robust to image quality variations due to compression required to address data storage and transmission constraints. However, the results presented are specific to the CAD system and application described, and further work is needed to examine whether they generalize to other systems and applications.
组织病理学全切片图像(WSIs)中大量数据的可用性使得深度学习模型尤其是卷积神经网络(CNNs)得以应用,这些模型在癌症诊断的改进方面显示出了很高的潜力。然而,存储和传输大量数据(如数十亿像素的组织病理学WSIs)具有挑战性。对医学图像采用有损压缩算法存在争议,但只要不影响临床诊断,就是可以接受的。我们研究了JPEG 2000压缩对我们提出的基于CNN的算法的影响,该算法产生的性能与病理学家相当,并且在CAMELYON17挑战赛中排名第二。在三种不同的实验设置中,对苏木精和伊红染色的乳腺淋巴结组织切片中的肿瘤转移进行检测,并与病理学家的诊断结果进行比较。我们的实验表明,当在未压缩的高质量图像上进行训练时,CNN模型对于高达24:1的压缩比具有鲁棒性。我们证明,在较低质量图像(即有损压缩图像)上训练的模型,对于相应的压缩比,其分类性能有显著提高。此外,还观察到该模型在所有更高质量的图像上表现同样良好。这些特性将有助于设计基于云的计算机辅助诊断(CAD)系统,例如远程医疗,这些系统采用对图像质量变化更具鲁棒性的深度CNN模型,以应对数据存储和传输限制所需的压缩。然而,所呈现的结果特定于所描述的CAD系统和应用,还需要进一步的工作来检验它们是否适用于其他系统和应用。