Authors
Haoyan Liu, Nagma Vohra, Keith Bailey, Magda El-Shenawee, Alexander H Nelson
Publication date
2022/1
Journal
Journal of Infrared, Millimeter, and Terahertz Waves
Volume
43
Issue
1-2
Pages
48-70
Publisher
Springer US
Description
Terahertz imaging and spectroscopy is an exciting technology that has the potential to provide insights in medical imaging. Prior research has leveraged statistical inference to classify tissue regions from terahertz images. To date, these approaches have shown that the segmentation problem is challenging for images of fresh tissue and for tumors that have invaded muscular regions. Artificial intelligence, particularly machine learning and deep learning, has been shown to improve performance in some medical imaging challenges. This paper builds on that literature by modifying a set of deep learning approaches to the challenge of classifying tissue regions of images captured by terahertz imaging and spectroscopy of freshly excised murine xenograft tissue. Our approach is to preprocess the images through a wavelet synchronous-squeezed transformation (WSST) to convert time-sequential terahertz data of each …
Total citations
20222023202461210
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