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Improved cancer genomic diagnosis and prognosis are vital to accurate medical therapy. Deep learning methods offered an end-to-end solution to enhance the precision of analysis. With the fast pace of pre-trained Transformer models, it remains uncertain whether some novel approaches such as the sparsely gated mixture of expert (MOE) and self-attention mechanisms can further improve the precision of cancer prognosis and classification. In this paper, we introduce a novel sparsely gated cancer diagnosis and prognosis framework called Gene-MOE exploiting the potential of the MOE layers and the proposed mixture of attention expert (MOAE) layers to enhance the analysis accuracy. Additionally, we address overfitting challenges by integrating pan-cancer information from 33 distinct cancer types through pre-training. For survival analysis, Gene-MOE achieves the best Concordance Index compared with state-of-the-art models on 12 of 14 cancer types. For cancer classification, the total accuracy of the classification model for 33 cancer classifications reached 95.8%, representing the best performance compared to state-of-the-art models. For cancer subtyping, Gene-MOE achieves the best result on at least one metric of the log10 P-values and the number of significant clinical on seven of nine cancers. These results indicate that Gene-MOE holds strong potential for these downstream tasks.
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http://dx.doi.org/10.1109/TCBBIO.2024.3524209 | DOI Listing |
IEEE Trans Pattern Anal Mach Intell
August 2025
Recent Neural Radiance Field (NeRF) methods on large-scale scenes have demonstrated promising results and underlined the importance of scene decomposition for scalable NeRFs. Although these methods achieved reasonable scalability, there are several critical problems remaining unexplored in the existing large-scale NeRF modeling methods, i.e.
View Article and Find Full Text PDFIEEE Trans Comput Biol Bioinform
January 2025
Improved cancer genomic diagnosis and prognosis are vital to accurate medical therapy. Deep learning methods offered an end-to-end solution to enhance the precision of analysis. With the fast pace of pre-trained Transformer models, it remains uncertain whether some novel approaches such as the sparsely gated mixture of expert (MOE) and self-attention mechanisms can further improve the precision of cancer prognosis and classification.
View Article and Find Full Text PDFSci Rep
August 2025
School of Information Engineering, Hebei University of Architecture, Zhangjiakou, 075000, China.
This study addresses the challenges of missed and false detections in server motherboard defect identification, which arise from factors such as small target size, positional rotation deviations, and uneven scale distribution. To tackle these issues, we propose an enhanced detection model, EAE-DETR, which is based on an improved version of RT-DETR. Initially, we developed the CSP-EfficientVIM-CGLU module to enhance feature extraction capabilities while simultaneously reducing the model's parameter count through the implementation of dynamic gated convolution and global context modeling.
View Article and Find Full Text PDFNeural Netw
July 2025
Beijing Key Laboratory of Modern Information Science and Network Technology, BeiJing, 100044, China. Electronic address:
Weakly supervised camouflaged object segmentation (WSCOS) aims to segment objects well embedded in surroundings via the supervision of sparse annotations. To compensate for the shortcomings of sparse annotations, existing methods design intricate loss functions with multiple regularization rules, not fully exploring the annotation information itself. Therefore, to address this issue, this paper proposes the long-range diffusion network (LRDNet) to diffuse the sparse annotations for improving WSCOS performance.
View Article and Find Full Text PDFGates Open Res
July 2025
Egerton University, Njoro, Nakuru County, 20115, Kenya.
This paper explores the role of Technical and Vocational Education & Training (TVET) relative to academic education in the transition of youths to the labor market in Kenya. Kenya's education system has experienced tremendous changes and diversification over the years, from replacing the old curriculum with the 8-4-4 system, and later transitioning to a competency-based curriculum, not to mention an overhaul of TVET via the Technical and Vocational Education and Training Act No. 29 of 2013.
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