Application of Machine Learning for Segmentation of the Pulmonary Acinus Imaged by Synchrotron X-Ray Tomography

被引:0
|
作者
Arsic, Branko [1 ,2 ]
Saveljic, Igor [1 ,2 ]
Henry, Frank S. [3 ]
Filipovic, Nenad [1 ,2 ,5 ]
Tsuda, Akira [4 ,6 ]
机构
[1] Univ Kragujevac, Fac Engn, Dept Appl Mech, Kragujevac, Serbia
[2] BIOIRC Bioengn Res & Dev Ctr, Kragujevac, Serbia
[3] Manhattan Coll, Dept Mech Engn, Riverdale, NY USA
[4] Tsuda Lung Res, Shrewsbury, MA USA
[5] Univ Kragujevac, Fac Engn, Dept Appl Mech, Sestre Janj 6, Kragujevac 34000, Serbia
[6] Tsuda Lung Res, 28 Keyes House Rd, Shrewsbury, MA 01545 USA
关键词
machine learning; lung; alveolus; U-Net; segmentation; image; artificial intelligence; computer; threshold method; LUNGS;
D O I
10.1089/jamp.2022.0051
中图分类号
R56 [呼吸系及胸部疾病];
学科分类号
摘要
Background: 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.Methods: To overcome this challenge, we propose a new approach based on machine learning (ML) techniques for the validation step.Results: 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.Conclusion: The objective of this article is to explain the advantages of ML over the classical approach for acinar imaging.
引用
收藏
页码:27 / 33
页数:7
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