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Peng Yi Hao

Bio: Peng Yi Hao is an academic researcher from Zhejiang University of Technology. The author has contributed to research in topics: Engineering & Computer science. The author has an hindex of 1, co-authored 1 publications receiving 7 citations.

Papers
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Journal ArticleDOI
TL;DR: An automated and efficient approach with regression convolutional neural network is proposed that evaluates the skeletal age from the left hand wrist radiograph of young children using the carpal bones as the region of interest (ROI) and based on the regression Convolutional Neural Network.
Abstract: Pediatricians and pediatric endocrinologists utilize Bone Age Assessment (BAA) for in-vestigations pertaining to genetic disorders, hormonal complications and abnormalities in the skeletal system maturity of children. Conventional methods dating back to 1950 were often tedious and suscep-tible to inter-observer variability, and preceding attempts to improve these traditional techniques have inadequately addressed the human expert inter-observer variability so as to significantly refine bone age evaluations. In this paper, an automated and efficient approach with regression convolutional neu-ral network is proposed. This approach automatically exploits the carpal bones as the region of interest (ROI) and performs boundary extraction of carpal bones, then based on the regression convolutional neural network it evaluates the skeletal age from the left hand wrist radiograph of young children. Experiments show that the proposed method achieves an average discrepancy of 2.75 months between clinical and automatic bone age evaluations, and achieves 90.15% accuracy within 6 months from the ground truth for male. Further experimental results with test radiographs assigned an accuracy within 1 year achieved 99.43% accuracy.

13 citations

Journal ArticleDOI
TL;DR: A deep-learning-based end-to-end pigment identification framework that has high sensitivity to the underlying pigments and to the pigments with a low concentration, therefore enabling satisfying results in mapping the Pigments based on single-pixel XRF spectrum.
Abstract: X-ray fluorescence spectroscopy (XRF) plays an important role for elemental analysis in a wide range of scientific fields, especially in cultural heritage. XRF imaging, which uses a raster scan to...

2 citations


Cited by
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Journal ArticleDOI
TL;DR: The most widely used method of bone age assessment is by performing a hand and wrist radiograph and its analysis with Greulich-Pyle or Tanner-Whitehouse atlases, although it has been about 60 years since they were published.
Abstract: Bone age is one of biological indicators of maturity used in clinical practice and it is a very important parameter of a child's assessment, especially in paediatric endocrinology. The most widely used method of bone age assessment is by performing a hand and wrist radiograph and its analysis with Greulich-Pyle or Tanner-Whitehouse atlases, although it has been about 60 years since they were published. Due to the progress in the area of Computer-Aided Diagnosis and application of artificial intelligence in medicine, lately, numerous programs for automatic bone age assessment have been created. Most of them have been verified in clinical studies in comparison to traditional methods showing good precision while eliminating inter- and intra-rater variability and reducing significantly the time of assessment. Also, there are available methods of assessment of bone age without X-ray exposure, like via ultrasound devices or MRI.

24 citations

Journal ArticleDOI
TL;DR: Li et al. as discussed by the authors proposed an ensemble-based deep learning pipeline to automatically assess the distal radius and ulna (DRU) maturity from left-hand radiographs and adapted the concept of densely connected mechanism in the proposed network architecture to reuse features and prevent gradient disappearance.
Abstract: Assessment of skeletal maturity is important for a clinician to make a decision of the most appropriate treatment on various skeletal disorders. This task is very challenging when using machine learning method due to the limited data and large anatomical variations among different subjects. In this article, we propose an ensemble-based deep learning pipeline to automatically assess the distal radius and ulna (DRU) maturity from left-hand radiographs. At the same time, we adapted the concept of densely connected mechanism in the proposed network architecture to reuse features and prevent gradient disappearance. Therefore, the model acquires two convincing advantages: first, our model preserves the maximum information flow and has a much faster convergence rate. Second, our model avoids overfitting even if training with limited data. The experimental dataset contains 1189 left-hand $X$ -ray scans of children and teenagers. The proposed method achieves 85.27% and 91.68% for radius and ulna classification, respectively. Extensive experiments prove that our model performs better than using other network structures.

18 citations

Journal ArticleDOI
TL;DR: A convolutional neural network with spatial pyramid pooling layer and attention mechanism module is developed to ensure the integrity of the image space information and enhance the subtle difference of features among radiographs respectively in a novel multi-modal data fusion-learning network for bone age assessment utilizing radiographs and texts.
Abstract: Bone age assessment is a pediatric examination that determines the difference between skeletal age and chronological age. The discrepancy between the two ages will often trigger the likelihood of genetic disorders, hormonal complications and abnormalities of maturity in the skeletal system. Recently, although some automated bone age assessment methods by analyzing radiographs have been researched, the available text data from radiological reports are not used. Texts and radiographs are two different modals, the fusion of them can give us much more information for bone age assessment. In this paper, we present a novel multi-modal data fusion-learning network, called RT-FuseNet, for bone age assessment utilizing radiographs and texts. Specifically, we develop a convolutional neural network with spatial pyramid pooling layer and attention mechanism module to ensure the integrity of the image space information and enhance the subtle difference of features among radiographs respectively. In addition, texts are incorporated into the learning model to jointly learn non-linear correlations between various heterogeneous data. To evaluate the proposed approach, two datasets are used and several neural network structures are compared. Experimental results show that the proposed approach performs well.

3 citations

Journal ArticleDOI
07 Sep 2021
TL;DR: In this article, the authors provide a brief review of several definitions and techniques that are commonly used in AI, and in particular machine vision, and examples of how they are currently being applied to the setting of clinical neuroradiology.
Abstract: Artificial Intelligence, Machine Learning, and myriad related techniques are becoming ever more commonplace throughout industry and society, and radiology is by no means an exception. It is essential for every radiologists of every subspecialty to gain familiarity and confidence with these techniques as they become increasingly incorporated into the routine practice in both academic and private practice settings. In this article, we provide a brief review of several definitions and techniques that are commonly used in AI, and in particular machine vision, and examples of how they are currently being applied to the setting of clinical neuroradiology. We then review the unique challenges that the adoption and application of faces within the subspecialty of pediatric neuroradiology, and how these obstacles may be overcome. We conclude by presenting specific examples of how AI is currently being applied within the field of pediatric neuroradiology and the potential opportunities that are available for future applications.

3 citations

Journal ArticleDOI
TL;DR: Information from an artificial intelligence (AI) deep learning convolutional neural network model improves both the accuracy and the consistency of bone age assessments for physicians of all levels of experience.
Abstract: Background The accuracy and consistency of bone age assessments (BAA) using standard methods can vary with physicians' level of experience. Methods To assess the impact of information from an artificial intelligence (AI) deep learning convolutional neural network (CNN) model on BAA, specialists with different levels of experience (junior, mid-level, and senior) assessed radiographs from 316 children aged 4–18 years that had been randomly divided into two equal sets-group A and group B. Bone age (BA) was assessed independently by each specialist without additional information (group A) and with information from the model (group B). With the mean assessment of four experts as the reference standard, mean absolute error (MAE), and intraclass correlation coefficient (ICC) were calculated to evaluate accuracy and consistency. Individual assessments of 13 bones (radius, ulna, and short bones) were also compared between group A and group B with the rank-sum test. Results The accuracies of senior, mid-level, and junior physicians were significantly better (all P < 0.001) with AI assistance (MAEs 0.325, 0.344, and 0.370, respectively) than without AI assistance (MAEs 0.403, 0.469, and 0.755, respectively). Moreover, for senior, mid-level, and junior physicians, consistency was significantly higher (all P < 0.001) with AI assistance (ICCs 0.996, 0.996, and 0.992, respectively) than without AI assistance (ICCs 0.987, 0.989, and 0.941, respectively). For all levels of experience, accuracy with AI assistance was significantly better than accuracy without AI assistance for assessments of the first and fifth proximal phalanges. Conclusions Information from an AI model improves both the accuracy and the consistency of bone age assessments for physicians of all levels of experience. The first and fifth proximal phalanges are difficult to assess, and they should be paid more attention.

2 citations