Image-driven Bridge Inspection Framework using Deep Learning and Image Registration

Author(s):  
Soojin Cho ◽  
Byunghyun Kim
2021 ◽  
Vol 7 (10) ◽  
pp. 203
Author(s):  
Laura Connolly ◽  
Amoon Jamzad ◽  
Martin Kaufmann ◽  
Catriona E. Farquharson ◽  
Kevin Ren ◽  
...  

Mass spectrometry is an effective imaging tool for evaluating biological tissue to detect cancer. With the assistance of deep learning, this technology can be used as a perioperative tissue assessment tool that will facilitate informed surgical decisions. To achieve such a system requires the development of a database of mass spectrometry signals and their corresponding pathology labels. Assigning correct labels, in turn, necessitates precise spatial registration of histopathology and mass spectrometry data. This is a challenging task due to the domain differences and noisy nature of images. In this study, we create a registration framework for mass spectrometry and pathology images as a contribution to the development of perioperative tissue assessment. In doing so, we explore two opportunities in deep learning for medical image registration, namely, unsupervised, multi-modal deformable image registration and evaluation of the registration. We test this system on prostate needle biopsy cores that were imaged with desorption electrospray ionization mass spectrometry (DESI) and show that we can successfully register DESI and histology images to achieve accurate alignment and, consequently, labelling for future training. This automation is expected to improve the efficiency and development of a deep learning architecture that will benefit the use of mass spectrometry imaging for cancer diagnosis.


Medical image registration has important value in actual clinical applications. From the traditional time-consuming iterative similarity optimization method to the short time-consuming supervised deep learning to today's unsupervised learning, the continuous optimization of the registration strategy makes it more feasible in clinical applications. This survey mainly focuses on unsupervised learning methods and introduces the latest solutions for different registration relationships. The registration for inter-modality is a more challenging topic. The application of unsupervised learning in registration for inter-modality is the focus of this article. In addition, this survey also proposes ideas for future research methods to show directions of the future research.


2020 ◽  
Vol 47 (3) ◽  
pp. 1094-1104
Author(s):  
Elizabeth M. McKenzie ◽  
Anand Santhanam ◽  
Dan Ruan ◽  
Daniel O'Connor ◽  
Minsong Cao ◽  
...  

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