Literature DB >> 34936555

Disease-Specific Imaging Utilizing Support Vector Machine Classification of H-Scan Parameters: Assessment of Steatosis in a Rat Model.

Jihye Baek, Lokesh Basavarajappa, Kenneth Hoyt, Kevin J Parker.   

Abstract

In medical imaging, quantitative measurements have shown promise in identifying diseases by classifying normal versus pathological parameters from tissues. The support vector machine (SVM) has shown promise as a supervised classification algorithm and has been widely used. However, the classification results typically identify a category of abnormal tissues but do not necessarily differentiate progressive stages of a disease. Moreover, the classification result is typically provided independently as a supplement to medical images, which contributes to an overload of information sources in the clinic. Hence, we propose a new imaging method utilizing the SVM to integrate classification results into medical images. This framework is called disease-specific imaging (DSI) that produces a color overlaid highlight on B-mode ultrasound images indicating the type, location, and severity of pathology from different conditions. In this article, the SVM training was performed to construct hyperplanes that can differentiate normal, fibrosis, steatosis, and pancreatic ductal adenocarcinoma (PDAC) metastases in livers based on ultrasound echoes. Also, cluster centroids for specific diseases define unique disease axes, and the inner product between measured features and any disease axis selected by the SVM quantifies the disease progression. The features were measured from 2794 ultrasound frames using the H-scan analysis, attenuation estimation, and B-mode image analysis. The performance of our proposed DSI method was evaluated for a preclinical model of steatosis ( n = 400 frames). The contribution of each feature was assessed, and the results were compared with ground truth from histology. Moreover, the images generated by our DSI were compared with earlier imaging methods of B-mode, H-scan, and histology. The comparisons demonstrate that DSI images yield higher sensitivity to monitor progressive steatosis than B-mode and H-scan and provide a comparable performance with the histology. For the parameter comparison, DSI and H-scan resulted in similar correlation with histology ( rs = 0.83 ) but higher than attenuation ( rs = 0.73 ) and B-mode ( rs = 0.47 ). Therefore, we conclude that DSI utilizing the SVM applied to steatosis can visually represent the classification results with color highlighting, which can simplify the interpretation of classification compared to the traditional SVM result. We expect that the proposed DSI can be used for any medical imaging modality that can estimate multiple quantitative parameters at high resolution.

Entities:  

Mesh:

Year:  2022        PMID: 34936555      PMCID: PMC8908945          DOI: 10.1109/TUFFC.2021.3137644

Source DB:  PubMed          Journal:  IEEE Trans Ultrason Ferroelectr Freq Control        ISSN: 0885-3010            Impact factor:   2.725


  39 in total

1.  What do we know about shear wave dispersion in normal and steatotic livers?

Authors:  Kevin J Parker; Alexander Partin; Deborah J Rubens
Journal:  Ultrasound Med Biol       Date:  2015-02-24       Impact factor: 2.998

Review 2.  Shear wave elastography for evaluation of liver fibrosis.

Authors:  Giovanna Ferraioli; Parth Parekh; Alexander B Levitov; Carlo Filice
Journal:  J Ultrasound Med       Date:  2014-02       Impact factor: 2.153

3.  A deep learning framework for supporting the classification of breast lesions in ultrasound images.

Authors:  Seokmin Han; Ho-Kyung Kang; Ja-Yeon Jeong; Moon-Ho Park; Wonsik Kim; Won-Chul Bang; Yeong-Kyeong Seong
Journal:  Phys Med Biol       Date:  2017-09-15       Impact factor: 3.609

Review 4.  Comprehensive compilation of empirical ultrasonic properties of mammalian tissues.

Authors:  S A Goss; R L Johnston; F Dunn
Journal:  J Acoust Soc Am       Date:  1978-08       Impact factor: 1.840

5.  Beamforming and Speckle Reduction Using Neural Networks.

Authors:  Dongwoon Hyun; Leandra L Brickson; Kevin T Looby; Jeremy J Dahl
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2019-03-08       Impact factor: 2.725

6.  Characterization of thyroid cancer in mouse models using high-frequency quantitative ultrasound techniques.

Authors:  Roberto J Lavarello; William R Ridgway; Sandhya S Sarwate; Michael L Oelze
Journal:  Ultrasound Med Biol       Date:  2013-09-11       Impact factor: 2.998

Review 7.  Review of Quantitative Ultrasound: Envelope Statistics and Backscatter Coefficient Imaging and Contributions to Diagnostic Ultrasound.

Authors:  Michael L Oelze; Jonathan Mamou
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2016-01-08       Impact factor: 2.725

8.  Deep Neural Networks for Ultrasound Beamforming.

Authors:  Adam C Luchies; Brett C Byram
Journal:  IEEE Trans Med Imaging       Date:  2018-02-26       Impact factor: 10.048

9.  Scattering Signatures of Normal versus Abnormal Livers with Support Vector Machine Classification.

Authors:  Jihye Baek; Sedigheh S Poul; Terri A Swanson; Theresa Tuthill; Kevin J Parker
Journal:  Ultrasound Med Biol       Date:  2020-09-08       Impact factor: 3.694

Review 10.  Quantitative ultrasound approaches for diagnosis and monitoring hepatic steatosis in nonalcoholic fatty liver disease.

Authors:  Amir M Pirmoazen; Aman Khurana; Ahmed El Kaffas; Aya Kamaya
Journal:  Theranostics       Date:  2020-03-04       Impact factor: 11.556

View more
  1 in total

1.  Photoacoustic graphic equalization and application in characterization of red blood cell aggregates.

Authors:  Lokesh Basavarajappa; Kenneth Hoyt
Journal:  Photoacoustics       Date:  2022-05-09
  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.