High-Frequency Ultrasound Dataset for Deep Learning-Based Image Quality Assessment

被引:15
作者
Czajkowska, Joanna [1 ]
Juszczyk, Jan [1 ]
Piejko, Laura [2 ]
Glenc-Ambrozy, Malgorzata [3 ]
机构
[1] Silesian Tech Univ, Fac Biomed Engn, Roosevelta 40, Zabrze, Poland
[2] Jerzy Kukuczka Acad Phys Educ, Inst Physiotherapy & Hlth Sci, Mikolowska 72a, Katowice, Poland
[3] Amber Acad, Piown 3, Rybnik, Poland
关键词
high-frequency ultrasound; image classification; deep learning; transfer learning; image quality assessment; SEGMENTATION; CLASSIFICATION; LESIONS;
D O I
10.3390/s22041478
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
This study aims at high-frequency ultrasound image quality assessment for computer-aided diagnosis of skin. In recent decades, high-frequency ultrasound imaging opened up new opportunities in dermatology, utilizing the most recent deep learning-based algorithms for automated image analysis. An individual dermatological examination contains either a single image, a couple of pictures, or an image series acquired during the probe movement. The estimated skin parameters might depend on the probe position, orientation, or acquisition setup. Consequently, the more images analyzed, the more precise the obtained measurements. Therefore, for the automated measurements, the best choice is to acquire the image series and then analyze its parameters statistically. However, besides the correctly received images, the resulting series contains plenty of non-informative data: Images with different artifacts, noise, or the images acquired for the time stamp when the ultrasound probe has no contact with the patient skin. All of them influence further analysis, leading to misclassification or incorrect image segmentation. Therefore, an automated image selection step is crucial. To meet this need, we collected and shared 17,425 high-frequency images of the facial skin from 516 measurements of 44 patients. Two experts annotated each image as correct or not. The proposed framework utilizes a deep convolutional neural network followed by a fuzzy reasoning system to assess the acquired data's quality automatically. Different approaches to binary and multi-class image analysis, based on the VGG-16 model, were developed and compared. The best classification results reach 91.7% accuracy for the first, and 82.3% for the second analysis, respectively.
引用
收藏
页数:17
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