Literature DB >> 33348873

Model-Agnostic Method for Thoracic Wall Segmentation in Fetal Ultrasound Videos.

Kanto Shozu1,2, Masaaki Komatsu1,3, Akira Sakai4,5,6, Reina Komatsu5,7, Ai Dozen1, Hidenori Machino1,3, Suguru Yasutomi4,5, Tatsuya Arakaki7, Ken Asada1,3, Syuzo Kaneko1,3, Ryu Matsuoka5,7, Akitoshi Nakashima2, Akihiko Sekizawa7, Ryuji Hamamoto1,3,6.   

Abstract

The application of segmentation methods to medical imaging has the potential to create novel diagnostic support models. With respect to fetal ultrasound, the thoracic wall is a key structure on the assessment of the chest region for examiners to recognize the relative orientation and size of structures inside the thorax, which are critical components in neonatal prognosis. In this study, to improve the segmentation performance of the thoracic wall in fetal ultrasound videos, we proposed a novel model-agnostic method using deep learning techniques: the Multi-Frame + Cylinder method (MFCY). The Multi-frame method (MF) uses time-series information of ultrasound videos, and the Cylinder method (CY) utilizes the shape of the thoracic wall. To evaluate the achieved improvement, we performed segmentation using five-fold cross-validation on 538 ultrasound frames in the four-chamber view (4CV) of 256 normal cases using U-net and DeepLabv3+. MFCY increased the mean values of the intersection over union (IoU) of thoracic wall segmentation from 0.448 to 0.493 for U-net and from 0.417 to 0.470 for DeepLabv3+. These results demonstrated that MFCY improved the segmentation performance of the thoracic wall in fetal ultrasound videos without altering the network structure. MFCY is expected to facilitate the development of diagnostic support models in fetal ultrasound by providing further accurate segmentation of the thoracic wall.

Entities:  

Keywords:  deep learning; ensemble learning; fetal ultrasound; model-agnostic; prenatal diagnosis; thoracic wall segmentation

Year:  2020        PMID: 33348873     DOI: 10.3390/biom10121691

Source DB:  PubMed          Journal:  Biomolecules        ISSN: 2218-273X


  7 in total

Review 1.  Application of non-negative matrix factorization in oncology: one approach for establishing precision medicine.

Authors:  Ryuji Hamamoto; Ken Takasawa; Hidenori Machino; Kazuma Kobayashi; Satoshi Takahashi; Amina Bolatkan; Norio Shinkai; Akira Sakai; Rina Aoyama; Masayoshi Yamada; Ken Asada; Masaaki Komatsu; Koji Okamoto; Hirokazu Kameoka; Syuzo Kaneko
Journal:  Brief Bioinform       Date:  2022-07-18       Impact factor: 13.994

2.  Automated Endocardial Border Detection and Left Ventricular Functional Assessment in Echocardiography Using Deep Learning.

Authors:  Shunzaburo Ono; Masaaki Komatsu; Akira Sakai; Hideki Arima; Mie Ochida; Rina Aoyama; Suguru Yasutomi; Ken Asada; Syuzo Kaneko; Tetsuo Sasano; Ryuji Hamamoto
Journal:  Biomedicines       Date:  2022-05-06

Review 3.  Integrated Analysis of Whole Genome and Epigenome Data Using Machine Learning Technology: Toward the Establishment of Precision Oncology.

Authors:  Ken Asada; Syuzo Kaneko; Ken Takasawa; Hidenori Machino; Satoshi Takahashi; Norio Shinkai; Ryo Shimoyama; Masaaki Komatsu; Ryuji Hamamoto
Journal:  Front Oncol       Date:  2021-05-12       Impact factor: 6.244

4.  Medical Professional Enhancement Using Explainable Artificial Intelligence in Fetal Cardiac Ultrasound Screening.

Authors:  Akira Sakai; Masaaki Komatsu; Reina Komatsu; Ryu Matsuoka; Suguru Yasutomi; Ai Dozen; Kanto Shozu; Tatsuya Arakaki; Hidenori Machino; Ken Asada; Syuzo Kaneko; Akihiko Sekizawa; Ryuji Hamamoto
Journal:  Biomedicines       Date:  2022-02-25

5.  Application of Artificial Intelligence for Medical Research.

Authors:  Ryuji Hamamoto
Journal:  Biomolecules       Date:  2021-01-12

Review 6.  A New Era of Neuro-Oncology Research Pioneered by Multi-Omics Analysis and Machine Learning.

Authors:  Satoshi Takahashi; Masamichi Takahashi; Shota Tanaka; Shunsaku Takayanagi; Hirokazu Takami; Erika Yamazawa; Shohei Nambu; Mototaka Miyake; Kaishi Satomi; Koichi Ichimura; Yoshitaka Narita; Ryuji Hamamoto
Journal:  Biomolecules       Date:  2021-04-12

7.  A Novel Graph Neural Network Methodology to Investigate Dihydroorotate Dehydrogenase Inhibitors in Small Cell Lung Cancer.

Authors:  Hong-Yi Zhi; Lu Zhao; Cheng-Chun Lee; Calvin Yu-Chian Chen
Journal:  Biomolecules       Date:  2021-03-23
  7 in total

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