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DeepFocus: Detection of out-of-focus regions in whole slide digital images using deep learning

机译:DeepFocus:使用深度学习检测整个幻灯片数字图像中的失焦区域

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摘要

The development of whole slide scanners has revolutionized the field of digital pathology. Unfortunately, whole slide scanners often produce images with out-of-focus/blurry areas that limit the amount of tissue available for a pathologist to make accurate diagnosis/prognosis. Moreover, these artifacts hamper the performance of computerized image analysis systems. These areas are typically identified by visual inspection, which leads to a subjective evaluation causing high intra- and inter-observer variability. Moreover, this process is both tedious, and time-consuming. The aim of this study is to develop a deep learning based software called, DeepFocus, which can automatically detect and segment blurry areas in digital whole slide images to address these problems. DeepFocus is built on TensorFlow, an open source library that exploits data flow graphs for efficient numerical computation. DeepFocus was trained by using 16 different H&E and IHC-stained slides that were systematically scanned on nine different focal planes, generating 216,000 samples with varying amounts of blurriness. When trained and tested on two independent datasets, DeepFocus resulted in an average accuracy of 93.2% (± 9.6%), which is a 23.8% improvement over an existing method. DeepFocus has the potential to be integrated with whole slide scanners to automatically re-scan problematic areas, hence improving the overall image quality for pathologists and image analysis algorithms.
机译:整个幻灯片扫描仪的发展彻底改变了数字病理学领域。不幸的是,整个载玻片扫描仪通常会产生散焦/模糊区域的图像,这会限制病理学家进行准确诊断/预后的组织数量。此外,这些伪像阻碍了计算机图像分析系统的性能。这些区域通常通过视觉检查来识别,这导致主观评估,从而导致观察者内部和观察者之间的差异很大。而且,该过程既繁琐又费时。这项研究的目的是开发一种基于深度学习的软件DeepFocus,该软件可以自动检测并分割数字整张幻灯片图像中的模糊区域,以解决这些问题。 DeepFocus建立在TensorFlow上,TensorFlow是一个开放源代码库,可利用数据流图进行有效的数值计算。通过使用16种不同的H&E和IHC染色载玻片对DeepFocus进行了训练,这些载玻片在9个不同焦平面上进行了系统扫描,生成了216,000个具有不同模糊度的样本。在两个独立的数据集上进行训练和测试时,DeepFocus的平均准确度为93.2%(±9.6%),比现有方法提高了23.8%。 DeepFocus具有与整个幻灯片扫描仪集成的潜力,可以自动重新扫描有问题的区域,从而提高了病理学家和图像分析算法的整体图像质量。

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