Paper
1 April 2016 Automated kidney detection for 3D ultrasound using scan line searching
Author Affiliations +
Abstract
Ultrasound (U/S) is a fast and non-expensive imaging modality that is used for the examination of various anatomical structures, e.g. the kidneys. One important task for automatic organ tracking or computer-aided diagnosis is the identification of the organ region. During this process the exact information about the transducer location and orientation is usually unavailable. This renders the implementation of such automatic methods exceedingly challenging. In this work we like to introduce a new automatic method for the detection of the kidney in 3D U/S images. This novel technique analyses the U/S image data along virtual scan lines. Here, characteristic texture changes when entering and leaving the symmetric tissue regions of the renal cortex are searched for. A subsequent feature accumulation along a second scan direction produces a 2D heat map of renal cortex candidates, from which the kidney location is extracted in two steps. First, the strongest candidate as well as its counterpart are extracted by heat map intensity ranking and renal cortex size analysis. This process exploits the heat map gap caused by the renal pelvis region. Substituting the renal pelvis detection with this combined cortex tissue feature increases the detection robustness. In contrast to model based methods that generate characteristic pattern matches, our method is simpler and therefore faster. An evaluation performed on 61 3D U/S data sets showed, that in 55 cases showing none or minor shadowing the kidney location could be correctly identified.
© (2016) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Matthias Noll, Anne Nadolny, and Stefan Wesarg "Automated kidney detection for 3D ultrasound using scan line searching", Proc. SPIE 9790, Medical Imaging 2016: Ultrasonic Imaging and Tomography, 97901B (1 April 2016); https://doi.org/10.1117/12.2217127
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CITATIONS
Cited by 3 scholarly publications.
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KEYWORDS
Kidney

Image segmentation

Ultrasonography

3D modeling

Liver

3D scanning

Detection and tracking algorithms

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