Machine learning-based colon deformation estimation method for colonoscope tracking
Masahiro Oda, Takayuki Kitasaka, Kazuhiro Furukawa, Ryoji Miyahara,, Yoshiki Hirooka, Hidemi Goto, Nassir Navab, Kensaku Mori

TL;DR
This paper introduces a machine learning-based method to estimate colon deformations during colonoscope insertions, aiming to improve tracking accuracy and reduce complications like perforation.
Contribution
It proposes a novel colon deformation estimation technique using regression forests trained on paired colon and colonoscope shapes during insertions.
Findings
Successfully estimated deformed colon phantom shapes
Reduced tracking errors in colon deformation estimation
Demonstrated feasibility in preliminary phantom experiments
Abstract
This paper presents a colon deformation estimation method, which can be used to estimate colon deformations during colonoscope insertions. Colonoscope tracking or navigation system that navigates a physician to polyp positions during a colonoscope insertion is required to reduce complications such as colon perforation. A previous colonoscope tracking method obtains a colonoscope position in the colon by registering a colonoscope shape and a colon shape. The colonoscope shape is obtained using an electromagnetic sensor, and the colon shape is obtained from a CT volume. However, large tracking errors were observed due to colon deformations occurred during colonoscope insertions. Such deformations make the registration difficult. Because the colon deformation is caused by a colonoscope, there is a strong relationship between the colon deformation and the colonoscope shape. An estimation…
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