Iterative annotation to ease neural network training: Specialized machine learning in medical image analysis

Lutnick, Brendon, Ginley, Brandon, Govind, Darshana, McGarry, Sean D., LaViolette, Peter S., Yacoub, Rabi, Jain, Sanjay, Tomaszewski, John E., Jen, Kuang-Yu, Sarder, Pinaki

arXiv.org Machine Learning 

Neural networks promise to bring robust, quantitative analysis to medical fields, but adoption is limited by the technicalities of training these networks. To address this translation gap between medical researchers and neural networks in the field of pathology, we have created an intuitive interface which utilizes the commonly used whole slide image (WSI) viewer, Aperio ImageScope (Leica Biosystems Imaging, Inc.), for the annotation and display of neural network predictions on WSIs. Leveraging this, we propose the use of a human-in-the-loop strategy to reduce the burden of WSI annotation. We track network performance improvements as a function of iteration and quantify the use of this pipeline for the segmentation of renal histologic findings on WSIs. More specifically, we present network performance when applied to segmentation of renal micro compartments, and demonstrate multi-class segmentation in human and mouse renal tissue slides. Finally, to show the adaptability of this technique to other medical imaging fields, we demonstrate its ability to iteratively segment human prostate glands from radiology imaging data. 1 Introduction In the current era of artificial intelligence, robust automated image analysis is attained using supervised machine learning algorithms. This approach is gaining considerable ground in virtually every domain of data analysis, mainly under the advent of neural networks [2-5]. Neural networks are a broad range of algorithms which can take many different forms, but all are considered graphical models, whose nodes can be variably activated by a nonlinear operation on the sum of their inputs [4, 6].

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