Convolutional neural networks (CNNs) have achieved remarkable success in computer vision, particularly in medical image segmentation. U-Net, a prominent architecture, marked a major breakthrough and remains widely used in practice. However, its uniform downsampling strategy and simple stacking of convolutional layers in the encoder limit its ability to capture rich features at multiple depths, reducing its efficiency for rapid image processing. To address these limitations, this paper proposes a novel segmentation network that integrates attention mechanisms with multilayer perceptrons (MLPs). The network is designed to progressively capture and refine features at different levels. At the low-level layers, the primary feature conservation (PFC) block is introduced to preserve essential spatial details and reduce the loss of primary features during downsampling. In the mid-level layers, the compact attention block (CAB) enhances feature interaction through a multi-path attention structure, improving the network's ability to capture diverse semantic information. At the high-level layers, Shift MLP and Tokenized MLP blocks are incorporated. The Shift MLP block shifts feature channels along different axes, allowing for enhanced local feature modeling by focusing on specific regions of the convolutional features. The Tokenized MLP block converts these features into abstract tokens and leverages MLPs to model their representations in the latent space, effectively reducing the number of parameters and computational complexity while improving segmentation performance. The experiments conducted on the colorectal cancer tumor dataset CCI and the public dataset ISIC-2018 demonstrate that the proposed method significantly outperforms U-Net, U-Net++, Swin-U-Net, Attention U-Net, and RA-U-Net in terms of performance, with average improvements of 6.67%, 5.53%, 10.18%, 4.78%, and 3.55%, respectively. The code is available at the following link: https://github.com/QingTianer/SAMP-Net.git.
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http://dx.doi.org/10.1007/s11517-025-03331-z | DOI Listing |
Ann Med
December 2025
Genetic Medical Center, Guangdong Women and Children Hospital. Xingnan Load, Guangzhou, China.
Objective: To investigate the application of whole exome sequencing (WES) in the prenatal diagnosis of isolated fetal growth restriction (FGR) with a normal result by chromosomal microarray analysis (CMA).
Methods: This retrospective study included singleton fetuses with isolated FGR in Guangdong Women and Children Hospital between July 2018 and August 2023. All fetuses were subjected to invasive prenatal testing with CMA and WES.
ACS Biomater Sci Eng
March 2025
Weifang Key Laboratory of Respiratory Tract Pathogens and Drug Therapy, School of Life Science and Technology, Shandong Second Medical University, Weifang 261000 P. R. China.
Improvements in tumor therapy require a combination of strategies where targeted treatment is critical. We developed a new versatile nanoplatform, MA@E, that generates high levels of reactive oxygen species (ROS) with effective photothermal conversions in the removal of tumors. Enhanced stability liposomes were employed as carriers to facilitate the uniform distribution and stable storage of encapsulated gold nanorods (AuNRs) and Mn-MIL-100 metal-organic frameworks, with efficient delivery of MA@E to the cytoplasm.
View Article and Find Full Text PDFNanoscale
March 2025
Research Center of Nano Technology and Application Engineering, The First Dongguan Affiliated Hospital, School of Pharmacy, Guangdong Medical University, Dongguan, 523808, Guangdong, P. R. China.
Manganese (Mn)-based materials have been extensively investigated for a wide range of biomedical applications owing to their remarkable catalytic chemistry, magnetic resonance imaging (MRI) capacity, biodegradability, low toxicity, and good biosafety. In this review, we first elaborate on the catalytic principle of Mn-based nanoenzymes for antitumor and antibacterial therapy, followed by a comprehensive discussion of the interesting structural design engineering strategies used to achieve multi-dimensional Mn-based nanoarchitectures, such as zero-dimensional (0D) nanoparticles, 1D nanotubes, 2D nanosheets, 3D hollow porous Mn ball, and core-shell nanostructures. Moreover, the therapeutic applications of different Mn-based nanoenzymes, including manganese dioxide (MnO)-based nanoenzymes that can trigger catalytic reactions, Mn-doped metal nanoenzymes and Mn-coordinated nanoenzymes that promote hydroxyl/reactive oxygen species (ROS) generation, and MnO-based micro/nanorobots that can effectively penetrate tumor tissues, are critically reviewed.
View Article and Find Full Text PDFCurr Opin Urol
March 2025
Department of Pediatric Urology, Oregon Health and Science University, Portland, Oregon, USA.
Purpose Of Review: There has been an explosion of creative uses of artificial intelligence (AI) in healthcare, with AI being touted as a solution for many problems facing the healthcare system. This review focuses on tools currently available to pediatric urologists, previews up-and-coming technologies, and highlights the latest studies investigating benefits and limitations of AI in practice.
Recent Findings: Imaging-driven AI software and clinical prediction tools are two of the more exciting applications of AI for pediatric urologists.
Surg Infect (Larchmt)
March 2025
Department of Surgery, University of Kansas Medical Center, Kansas City, Kansas, USA.
Percutaneous drains are a commonly used method of source control for intra-abdominal infections. Increased time to source control has been shown to predict worse outcomes in patients with intra-abdominal infections, but it is unclear whether this relationship is valid when the source control method is percutaneous drainage. We hypothesized that increased time from diagnostic imaging to drain placement would be associated with higher complication rates in a population of patients requiring percutaneous drainage for intra-abdominal, retroperitoneal, or pelvic infectious processes.
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