Image analysis tasks in computational pathology are commonly solved using convolutional neural networks (CNNs). The selection of a suitable CNN architecture and hyperparameters is usually done through exploratory iterative optimization, which is computationally expensive and requires substantial manual work. The goal of this article is to evaluate how generic tools for neural network architecture search and hyperparameter optimization perform for common use cases in computational pathology. For this purpose, we evaluated one on-premises and one cloud-based tool for three different classification tasks for histological images: tissue classification, mutation prediction, and grading. We found that the default CNN architectures and parameterizations of the evaluated AutoML tools already yielded classification performance on par with the original publications. Hyperparameter optimization for these tasks did not substantially improve performance, despite the additional computational effort. However, performance varied substantially between classifiers obtained from individual AutoML runs due to non-deterministic effects. Generic CNN architectures and AutoML tools could thus be a viable alternative to manually optimizing CNN architectures and parametrizations. This would allow developers of software solutions for computational pathology to focus efforts on harder-to-automate tasks such as data curation.
翻译:计算病理的图象分析任务通常使用进化神经网络(CNNs)来解决。选择合适的CNN架构和超参数通常是通过探索性迭代优化完成的,这在计算上是昂贵的,需要大量手工工作。本篇文章的目的是评估神经网络架构搜索和超光度优化通用工具如何在计算病理的通用案例中发挥作用。为此,我们评估了三种生理图象分类任务:组织分类、突变预测和分级的三种不同分类任务,即组织分类、突变预测和分级,其中一种在地基上和云基工具。我们发现,被评估的AutomaML工具的默认CNN架构和参数化已经与原始出版物一样产生了分类性能。尽管做了额外的计算努力,但这些任务的超光谱优化并没有大大改善性能。然而,由于非定型效果效应,从单个自动移动运行中获得的分级器的性能差异很大。因此,普通CNN架构和自动ML工具可能是手动优化CNN架构和分级的可行替代方法。这将使计算路径的软件解决方案的开发者能够将计算病理学上的解方法用于更硬的硬的翻式任务。