Department for Applied Mechanics, Faculty of Engineering, University of Kragujevac, Kragujevac, Serbia.
BIOIRC Bioengineering Research and Development Center, Kragujevac, Serbia.
J Aerosol Med Pulm Drug Deliv. 2023 Feb;36(1):27-33. doi: 10.1089/jamp.2022.0051. Epub 2022 Dec 19.
To assess the effectiveness of inhalation therapy, it is important to evaluate the lungs' structure; thus, visualization of the entire lungs at the level of the alveoli is necessary. To achieve this goal, the applied visualization technique must satisfy the following two conditions simultaneously: (1) it has to obtain images of the entire lungs, since one part of the lungs is influenced by the other parts, and (2) the images have to capture the detailed structure of the alveolus/acinus in which gas exchange occurs. However, current visualization techniques do not fulfill these two conditions simultaneously. Segmentation is a process in which each pixel of the obtained high-resolution images is simplified (i.e., the representation of an image is changed by categorizing and modifying each pixel) so that we can perform three-dimensional volume rendering. One of the bottlenecks of current approaches is that the accuracy of the segmentation of each image has to be evaluated on the outcome of the process (mainly by an expert). It is a formidable task to evaluate the astronomically large numbers of images that would be required to resolve the entire lungs in high resolution. To overcome this challenge, we propose a new approach based on machine learning (ML) techniques for the validation step. We demonstrate the accuracy of the segmentation process itself by comparison with previously validated images. In this ML approach, to achieve a reasonable accuracy, millions/billions of parameters used for segmentation have to be optimized. This computationally demanding new approach is achievable only due to recent dramatic increases in computation power. The objective of this article is to explain the advantages of ML over the classical approach for acinar imaging.
为了评估吸入疗法的效果,评估肺部结构非常重要;因此,需要对肺泡水平的整个肺部进行可视化。为了实现这一目标,所应用的可视化技术必须同时满足以下两个条件:(1)它必须获得整个肺部的图像,因为肺部的一部分会受到其他部分的影响;(2)图像必须捕捉到发生气体交换的肺泡/腺泡的详细结构。然而,目前的可视化技术并不能同时满足这两个条件。分割是一个将获得的高分辨率图像中的每个像素简化的过程(即通过对每个像素进行分类和修改来改变图像的表示),以便我们可以进行三维体积渲染。目前方法的一个瓶颈是,必须根据该过程的结果(主要由专家)来评估每个图像的分割准确性。评估需要高分辨率解析的整个肺部所需的天文数字图像数量是一项艰巨的任务。为了克服这一挑战,我们提出了一种基于机器学习(ML)技术的新方法用于验证步骤。我们通过与之前经过验证的图像进行比较来证明分割过程本身的准确性。在这种 ML 方法中,为了达到合理的准确性,必须优化用于分割的数百万/数十亿个参数。由于最近计算能力的大幅提高,这种计算要求很高的新方法才成为可能。本文的目的是解释 ML 相对于经典方法在腺泡成像中的优势。