Literature DB >> 30226815

Machine-learning-based automatic identification of fetal abdominal circumference from ultrasound images.

Bukweon Kim1, Kang Cheol Kim, Yejin Park, Ja-Young Kwon, Jaeseong Jang, Jin Keun Seo.   

Abstract

OBJECTIVE: Obstetricians mainly use ultrasound imaging for fetal biometric measurements. However, such measurements are cumbersome. Hence, there is urgent need for automatic biometric estimation. Automated analysis of ultrasound images is complicated owing to the patient-specific, operator-dependent, and machine-specific characteristics of such images. APPROACH: This paper proposes a method for the automatic fetal biometry estimation from 2D ultrasound data through several processes consisting of a specially designed convolutional neural network (CNN) and U-Net for each process. These machine learning techniques take clinicians' decisions, anatomical structures, and the characteristics of ultrasound images into account. The proposed method is divided into three steps: initial abdominal circumference (AC) estimation, AC measurement, and plane acceptance checking. MAIN
RESULTS: A CNN is used to classify ultrasound images (stomach bubble, amniotic fluid, and umbilical vein), and a Hough transform is used to obtain an initial estimate of the AC. These data are applied to other CNNs to estimate the spine position and bone regions. Then, the obtained information is used to determine the final AC. After determining the AC, a U-Net and a classification CNN are used to check whether the image is suitable for AC measurement. Finally, the efficacy of the proposed method is validated by clinical data. SIGNIFICANCE: Our method achieved a Dice similarity metric of [Formula: see text] for AC measurement and an accuracy of 87.10% for our acceptance check of the fetal abdominal standard plane.

Entities:  

Mesh:

Year:  2018        PMID: 30226815     DOI: 10.1088/1361-6579/aae255

Source DB:  PubMed          Journal:  Physiol Meas        ISSN: 0967-3334            Impact factor:   2.833


  6 in total

1.  Toward deep observation: A systematic survey on artificial intelligence techniques to monitor fetus via ultrasound images.

Authors:  Mahmood Alzubaidi; Marco Agus; Khalid Alyafei; Khaled A Althelaya; Uzair Shah; Alaa Abd-Alrazaq; Mohammed Anbar; Michel Makhlouf; Mowafa Househ
Journal:  iScience       Date:  2022-07-03

2.  Machine Learning-Aided Chronic Kidney Disease Diagnosis Based on Ultrasound Imaging Integrated with Computer-Extracted Measurable Features.

Authors:  Sangmi Lee; Myeongkyun Kang; Keunho Byeon; Sang Eun Lee; In Ho Lee; Young Ah Kim; Shin-Wook Kang; Jung Tak Park
Journal:  J Digit Imaging       Date:  2022-04-11       Impact factor: 4.903

3.  Optimization of Fetal Biometry With 3D Ultrasound and Image Recognition (EPICEA): protocol for a prospective cross-sectional study.

Authors:  Gaëlle Ambroise Grandjean; Gabriela Hossu; Claire Banasiak; Cybele Ciofolo-Veit; Caroline Raynaud; Laurence Rouet; Olivier Morel; Marine Beaumont
Journal:  BMJ Open       Date:  2019-12-15       Impact factor: 2.692

Review 4.  Artificial Intelligence in Prenatal Ultrasound Diagnosis.

Authors:  Fujiao He; Yaqin Wang; Yun Xiu; Yixin Zhang; Lizhu Chen
Journal:  Front Med (Lausanne)       Date:  2021-12-16

5.  A Novel Lightweight Deep Learning-Based Histopathological Image Classification Model for IoMT.

Authors:  Koyel Datta Gupta; Deepak Kumar Sharma; Shakib Ahmed; Harsh Gupta; Deepak Gupta; Ching-Hsien Hsu
Journal:  Neural Process Lett       Date:  2021-06-08       Impact factor: 2.565

Review 6.  Towards Clinical Application of Artificial Intelligence in Ultrasound Imaging.

Authors:  Masaaki Komatsu; Akira Sakai; Ai Dozen; Kanto Shozu; Suguru Yasutomi; Hidenori Machino; Ken Asada; Syuzo Kaneko; Ryuji Hamamoto
Journal:  Biomedicines       Date:  2021-06-23
  6 in total

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