2021
DOI: 10.3390/diagnostics11050765
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Intelligent Bone Age Assessment: An Automated System to Detect a Bone Growth Problem Using Convolutional Neural Networks with Attention Mechanism

Abstract: Skeletal bone age assessment using X-ray images is a standard clinical procedure to detect any anomaly in bone growth among kids and babies. The assessed bone age indicates the actual level of growth, whereby a large discrepancy between the assessed and chronological age might point to a growth disorder. Hence, skeletal bone age assessment is used to screen the possibility of growth abnormalities, genetic problems, and endocrine disorders. Usually, the manual screening is assessed through X-ray images of the n… Show more

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Cited by 14 publications
(10 citation statements)
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“…With the rapid development of artificial intelligence technology represented by deep neural networks, it is possible to achieve automatic and accurate segmentation of MS lesions based on MRI [ 2 ]. The realization of automatic and fast accurate MS lesion segmentation can not only reduce the burden of manual segmentation of MS lesions by experts, save the time and energy of experts in analyzing patients' conditions, and reduce the incorrect diagnosis due to subjective factors of experts, but also, because MS lesions show diffuse and multiplicity in imaging, it is difficult for inexperienced doctors to identify them accurately, and the realization of automatic and accurate MS lesion identification can to a certain extent, the automatic and accurate identification of MS lesions can assist in the diagnosis of MS by inexperienced physicians, which is conducive to the promotion and use in medically underdeveloped areas [ 3 ].…”
Section: Introductionmentioning
confidence: 99%
“…With the rapid development of artificial intelligence technology represented by deep neural networks, it is possible to achieve automatic and accurate segmentation of MS lesions based on MRI [ 2 ]. The realization of automatic and fast accurate MS lesion segmentation can not only reduce the burden of manual segmentation of MS lesions by experts, save the time and energy of experts in analyzing patients' conditions, and reduce the incorrect diagnosis due to subjective factors of experts, but also, because MS lesions show diffuse and multiplicity in imaging, it is difficult for inexperienced doctors to identify them accurately, and the realization of automatic and accurate MS lesion identification can to a certain extent, the automatic and accurate identification of MS lesions can assist in the diagnosis of MS by inexperienced physicians, which is conducive to the promotion and use in medically underdeveloped areas [ 3 ].…”
Section: Introductionmentioning
confidence: 99%
“…The BWLO_DRN proposed in this work for estimating bone age using the hand X-ray images is investigated for its effectiveness by comparing it with techniques, such as DL [1], MLP [3], Global_local feature_CNN [4], and Attention-guided approach [6] by considering the images obtained from RSNA Bone Age Detection and a real-time dataset.…”
Section: Comparative Techniquesmentioning
confidence: 99%
“…As a deep learning architecture achieves exceptional performance on training data through a substantial dataset and strategic multiscale unit placement, it may excel during training, but it may experience significant performance degradation during test phase. This is a pervasive issue in deep learning, referred to as overfitting, whereby a model becomes exceptionally proficient during training phase yet struggles to generalize effectively to new unseen data (Zulkifley et al, 2021). The overfit model inadvertently captures the noise and fluctuations present in the training data rather than the fundamental underlying patterns, representative of the intended problem.…”
Section: Challenges and Future Workmentioning
confidence: 99%
“…One approach to tackle overfitting challenge is by incorporating an attention mechanism into the deep learning architecture. In this context, the work in Zulkifley et al (2021) introduced the Attention-Xception Network (AXNet), which strategically guides the network to allocate more weight to specific image regions by integrating it with the Xception architecture. The results underscore that implementing the attention mechanism enhances network capabilities by emphasizing weights on selected regions of interest, as evidenced by the attention maps.…”
Section: Challenges and Future Workmentioning
confidence: 99%