Nowadays, cardiac diagnosis largely depends on left ventricular function assessment. With the help of the segmentation deep learning model, the assessment of the left ventricle becomes more accessible and accurate. However, deep learning technique still faces two main obstacles: the difficulty in acquiring sufficient training data and time-consuming in developing quality models. In the ordinary data acquisition process, the dataset was selected randomly from a large pool of unlabeled images for labeling, leading to massive labor time to annotate those images. Besides that, hand-designed model development is strenuous and also costly. This paper introduces a pipeline that relies on Active Learning to ease the labeling work and utilizes Neural Architecture Search's idea to design the adequate deep learning model automatically. We called this Fully automated machine learning pipeline for echocardiogram segmentation. The experiment results show that our method obtained the same IOU accuracy with only two-fifths of the original training dataset, and the searched model got the same accuracy as the hand-designed model given the same training dataset.
翻译:目前,心脏诊断主要依靠左心血管功能评估。在深层分离模型的帮助下,对左心室的评估变得更加容易获取和准确。然而,深层学习技术仍面临两个主要障碍:难以获得足够的培训数据,在开发质量模型方面耗费大量时间。在普通数据获取过程中,数据集是从大量未贴标签的图像库中随机选取的,从而导致大量劳动时间来批注这些图像。此外,手工设计模型的开发既费力又费钱。本文还引入了一条管道,依靠主动学习来方便标签工作,并利用神经结构搜索的理念来自动设计适当的深层学习模型。我们称之为“全自动机器学习管道”,用于回心图分割。实验结果表明,我们的方法获得了相同的IOU精度,而原始培训数据集只有五分之二,搜索模型的精度与手设计模型相同,而培训数据集的精度相同。