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Automatic head and neck tumor segmentation through deep learning and Bayesian optimization on three-dimensional medical images.

Douglas Z, Rahman A, Duggar WN, Wang H

pubmed logopapersMay 15 2025
Medical imaging constitutes critical information in the diagnostic and prognostic evaluation of patients, as it serves to uncover a broad spectrum of pathologies and deviances. Clinical practitioners who carry out medical image screening are primarily reliant on their knowledge and experience for disease diagnosis. Convolutional Neural Networks (CNNs) hold the potential to serve as a formidable decision-support tool in the realm of medical image analysis due to their high capacity to extract hierarchical features and effectuate direct classification and segmentation from image data. However, CNNs contain a myriad of hyperparameters and optimizing these hyperparameters poses a major obstacle to the effective implementation of CNNs. In this work, a two-phase Bayesian Optimization-derived Scheduling (BOS) approach is proposed for hyperparameter optimization for the head and cancerous tissue segmentation tasks. We proposed this two-phase BOS approach to incorporate both rapid convergences in the first training phase and slower (but without overfitting) improvements in the last training phase. Furthermore, we found that batch size and learning rate have a significant impact on the training process, but optimizing them separately can lead to sub-optimal hyperparameter combinations. Therefore, batch size and learning rate have been coupled as the batch size to learning rate (B2L) ratio and utilized in the optimization process to optimize both simultaneously. The optimized hyperparameters have been tested for a three-dimensional V-Net model with computed tomography (CT) and positron emission tomography (PET) scans to segment and classify cancerous and noncancerous tissues. The results of 10-fold cross-validation indicate that the optimal batch size to learning rate (B2L) ratio for each phase of the training method can improve the overall medical image segmentation performance.

An Annotated Multi-Site and Multi-Contrast Magnetic Resonance Imaging Dataset for the study of the Human Tongue Musculature.

Ribeiro FL, Zhu X, Ye X, Tu S, Ngo ST, Henderson RD, Steyn FJ, Kiernan MC, Barth M, Bollmann S, Shaw TB

pubmed logopapersMay 14 2025
This dataset provides the first annotated, openly available MRI-based imaging dataset for investigations of tongue musculature, including multi-contrast and multi-site MRI data from non-disease participants. The present dataset includes 47 participants collated from three studies: BeLong (four participants; T2-weighted images), EATT4MND (19 participants; T2-weighted images), and BMC (24 participants; T1-weighted images). We provide manually corrected segmentations of five key tongue muscles: the superior longitudinal, combined transverse/vertical, genioglossus, and inferior longitudinal muscles. Other phenotypic measures, including age, sex, weight, height, and tongue muscle volume, are also available for use. This dataset will benefit researchers across domains interested in the structure and function of the tongue in health and disease. For instance, researchers can use this data to train new machine learning models for tongue segmentation, which can be leveraged for segmentation and tracking of different tongue muscles engaged in speech formation in health and disease. Altogether, this dataset provides the means to the scientific community for investigation of the intricate tongue musculature and its role in physiological processes and speech production.

[Radiosurgery of benign intracranial lesions. Indications, results , and perspectives].

Danthez N, De Cournuaud C, Pistocchi S, Aureli V, Giammattei L, Hottinger AF, Schiappacasse L

pubmed logopapersMay 14 2025
Stereotactic radiosurgery (SRS) is a non-invasive technique that is transforming the management of benign intracranial lesions through its precision and preservation of healthy tissues. It is effective for meningiomas, trigeminal neuralgia (TN), pituitary adenomas, vestibular schwannomas, and arteriovenous malformations. SRS ensures high tumor control rates, particularly for Grade I meningiomas and vestibular schwannomas. For refractory TN, it provides initial pain relief > 80 %. The advent of technologies such as PET-MRI, hypofractionation, and artificial intelligence is further improving treatment precision, but challenges remain, including the management of late side effects and standardization of practice.

Using Foundation Models as Pseudo-Label Generators for Pre-Clinical 4D Cardiac CT Segmentation

Anne-Marie Rickmann, Stephanie L. Thorn, Shawn S. Ahn, Supum Lee, Selen Uman, Taras Lysyy, Rachel Burns, Nicole Guerrera, Francis G. Spinale, Jason A. Burdick, Albert J. Sinusas, James S. Duncan

arxiv logopreprintMay 14 2025
Cardiac image segmentation is an important step in many cardiac image analysis and modeling tasks such as motion tracking or simulations of cardiac mechanics. While deep learning has greatly advanced segmentation in clinical settings, there is limited work on pre-clinical imaging, notably in porcine models, which are often used due to their anatomical and physiological similarity to humans. However, differences between species create a domain shift that complicates direct model transfer from human to pig data. Recently, foundation models trained on large human datasets have shown promise for robust medical image segmentation; yet their applicability to porcine data remains largely unexplored. In this work, we investigate whether foundation models can generate sufficiently accurate pseudo-labels for pig cardiac CT and propose a simple self-training approach to iteratively refine these labels. Our method requires no manually annotated pig data, relying instead on iterative updates to improve segmentation quality. We demonstrate that this self-training process not only enhances segmentation accuracy but also smooths out temporal inconsistencies across consecutive frames. Although our results are encouraging, there remains room for improvement, for example by incorporating more sophisticated self-training strategies and by exploring additional foundation models and other cardiac imaging technologies.

Deep learning for cerebral vascular occlusion segmentation: A novel ConvNeXtV2 and GRN-integrated U-Net framework for diffusion-weighted imaging.

Ince S, Kunduracioglu I, Algarni A, Bayram B, Pacal I

pubmed logopapersMay 14 2025
Cerebral vascular occlusion is a serious condition that can lead to stroke and permanent neurological damage due to insufficient oxygen and nutrients reaching brain tissue. Early diagnosis and accurate segmentation are critical for effective treatment planning. Due to its high soft tissue contrast, Magnetic Resonance Imaging (MRI) is commonly used for detecting these occlusions such as ischemic stroke. However, challenges such as low contrast, noise, and heterogeneous lesion structures in MRI images complicate manual segmentation and often lead to misinterpretations. As a result, deep learning-based Computer-Aided Diagnosis (CAD) systems are essential for faster and more accurate diagnosis and treatment methods, although they can sometimes face challenges such as high computational costs and difficulties in segmenting small or irregular lesions. This study proposes a novel U-Net architecture enhanced with ConvNeXtV2 blocks and GRN-based Multi-Layer Perceptrons (MLP) to address these challenges in cerebral vascular occlusion segmentation. This is the first application of ConvNeXtV2 in this domain. The proposed model significantly improves segmentation accuracy, even in low-contrast regions, while maintaining high computational efficiency, which is crucial for real-world clinical applications. To reduce false positives and improve overall accuracy, small lesions (≤5 pixels) were removed in the preprocessing step with the support of expert clinicians. Experimental results on the ISLES 2022 dataset showed superior performance with an Intersection over Union (IoU) of 0.8015 and a Dice coefficient of 0.8894. Comparative analyses indicate that the proposed model achieves higher segmentation accuracy than existing U-Net variants and other methods, offering a promising solution for clinical use.

Automated whole-breast ultrasound tumor diagnosis using attention-inception network.

Zhang J, Huang YS, Wang YW, Xiang H, Lin X, Chang RF

pubmed logopapersMay 14 2025
Automated Whole-Breast Ultrasound (ABUS) has been widely used as an important tool in breast cancer diagnosis due to the ability of this technique to provide complete three-dimensional (3D) images of breasts. To eliminate the risk of misdiagnosis, computer-aided diagnosis (CADx) systems have been proposed to assist radiologists. Convolutional neural networks (CNNs), renowned for the automatic feature extraction capabilities, have developed rapidly in medical image analysis, and this study proposes a CADx system based on 3D CNN for ABUS. This study used a private dataset collected at Sun Yat-Sen University Cancer Center (SYSUCC) from 396 breast tumor patients. First, the tumor volume of interest (VOI) was extracted and resized, and then the tumor was enhanced by histogram equalization. Second, a 3D U-Net++ was employed to segment the tumor mask. Finally, the VOI, the enhanced VOI, and the corresponding tumor mask were fed into a 3D Attention-Inception network to classify the tumor as benign or malignant. The experiment results indicate an accuracy of 89.4%, a sensitivity of 91.2%, a specificity of 87.6%, and an area under the receiver operating characteristic curve (AUC) of 0.9262, which suggests that the proposed CADx system for ABUS images rivals the performance of experienced radiologists in tumor diagnosis tasks. This study proposes a CADx system consisting of a 3D U-Net++ tumor segmentation model and a 3D attention inception neural network tumor classification model for diagnosis in ABUS images. The results indicate that the proposed CADx system is effective and efficient in tumor diagnosis tasks.

AmygdalaGo-BOLT: an open and reliable AI tool to trace boundaries of human amygdala

Zhou, Q., Dong, B., Gao, P., Jintao, W., Xiao, J., Wang, W., Liang, P., Lin, D., Zuo, X.-N., He, H.

biorxiv logopreprintMay 13 2025
Each year, thousands of brain MRI scans are collected to study structural development in children and adolescents. However, the amygdala, a particularly small and complex structure, remains difficult to segment reliably, especially in developing populations where its volume is even smaller. To address this challenge, we developed AmygdalaGo-BOLT, a boundary-aware deep learning model tailored for human amygdala segmentation. It was trained and validated using 854 manually labeled scans from pediatric datasets, with independent samples used to ensure performance generalizability. The model integrates multiscale image features, spatial priors, and self-attention mechanisms within a compact encoder-decoder architecture to enhance boundary detection. Validation across multiple imaging centers and age groups shows that AmygdalaGo-BOLT closely matches expert manual labels, improves processing efficiency, and outperforms existing tools in accuracy. This enables robust and scalable analysis of amygdala morphology in developmental neuroimaging studies where manual tracing is impractical. To support open and reproducible science, we publicly release both the labeled datasets and the full source code.

Development of a deep learning method for phase retrieval image enhancement in phase contrast microcomputed tomography.

Ding XF, Duan X, Li N, Khoz Z, Wu FX, Chen X, Zhu N

pubmed logopapersMay 13 2025
Propagation-based imaging (one method of X-ray phase contrast imaging) with microcomputed tomography (PBI-µCT) offers the potential to visualise low-density materials, such as soft tissues and hydrogel constructs, which are difficult to be identified by conventional absorption-based contrast µCT. Conventional µCT reconstruction produces edge-enhanced contrast (EEC) images which preserve sharp boundaries but are susceptible to noise and do not provide consistent grey value representation for the same material. Meanwhile, phase retrieval (PR) algorithms can convert edge enhanced contrast to area contrast to improve signal-to-noise ratio (SNR), and contrast-to-noise ratio (CNR) but usually results to over-smoothing, thus creating inaccuracies in quantitative analysis. To alleviate these problems, this study developed a deep learning-based method called edge view enhanced phase retrieval (EVEPR), by strategically integrating the complementary spatial features of denoised EEC and PR images, and further applied this method to segment the hydrogel constructs in vivo and ex vivo. EVEPR used paired denoised EEC and PR images to train a deep convolutional neural network (CNN) on a dataset-to-dataset basis. The CNN had been trained on important high-frequency details, for example, edges and boundaries from the EEC image and area contrast from PR images. The CNN predicted result showed enhanced area contrast beyond conventional PR algorithms while improving SNR and CNR. The enhanced CNR especially allowed for the image to be segmented with greater efficiency. EVEPR was applied to in vitro and ex vivo PBI-µCT images of low-density hydrogel constructs. The enhanced visibility and consistency of hydrogel constructs was essential for segmenting such material which usually exhibit extremely poor contrast. The EVEPR images allowed for more accurate segmentation with reduced manual adjustments. The efficiency in segmentation allowed for the generation of a sizeable database of segmented hydrogel scaffolds which were used in conventional data-driven segmentation applications. EVEPR was demonstrated to be a robust post-image processing method capable of significantly enhancing image quality by training a CNN on paired denoised EEC and PR images. This method not only addressed the common issues of over-smoothing and noise susceptibility in conventional PBI-µCT image processing but also allowed for efficient and accurate in vitro and ex vivo image processing applications of low-density materials.

Enhancing Liver Fibrosis Measurement: Deep Learning and Uncertainty Analysis Across Multi-Centre Cohorts

Wojciechowska, M. K., Malacrino, S., Windell, D., Culver, E., Dyson, J., UK-AIH Consortium,, Rittscher, J.

medrxiv logopreprintMay 13 2025
O_FIG O_LINKSMALLFIG WIDTH=200 HEIGHT=111 SRC="FIGDIR/small/25326981v1_ufig1.gif" ALT="Figure 1"> View larger version (31K): [email protected]@14e7b87org.highwire.dtl.DTLVardef@19005c4org.highwire.dtl.DTLVardef@6ac42f_HPS_FORMAT_FIGEXP M_FIG O_FLOATNOGraphical AbstractC_FLOATNO C_FIG HighlightsO_LIA retrospective cohort of liver biopsies collected from over 20 healthcare centres has been assembled. C_LIO_LIThe cohort is characterized on the basis of collagen staining used for liver fibrosis assessment. C_LIO_LIA computational pipeline for the quantification of collagen from liver histology slides has been developed and applied to the described cohorts. C_LIO_LIUncertainty estimation is evaluated as a method to build trust in deep-learning based collagen predictions. C_LI The introduction of digital pathology has revolutionised the way in which histology-based measurements can support large, multi-centre studies. How-ever, pooling data from various centres often reveals significant differences in specimen quality, particularly regarding histological staining protocols. These variations present challenges in reliably quantifying features from stained tissue sections using image analysis. In this study, we investigate the statistical variation of measuring fibrosis across a liver cohort composed of four individual studies from 20 clinical sites across Europe and North America. In a first step, we apply colour consistency measurements to analyse staining variability across this diverse cohort. Subsequently, a learnt segmentation model is used to quantify the collagen proportionate area (CPA) and employed uncertainty mapping to evaluate the quality of the segmentations. Our analysis highlights a lack of standardisation in PicroSirius Red (PSR) staining practices, revealing significant variability in staining protocols across institutions. The deconvolution of the staining of the digitised slides identified the different numbers and types of counterstains used, leading to potentially incomparable results. Our analysis highlights the need for standardised staining protocols to ensure reliable collagen quantification in liver biopsies. The tools and methodologies presented here can be applied to perform slide colour quality control in digital pathology studies, thus enhancing the comparability and reproducibility of fibrosis assessment in the liver and other tissues.

Trustworthy AI for stage IV non-small cell lung cancer: Automatic segmentation and uncertainty quantification.

Dedeken S, Conze PH, Damerjian Pieters V, Gallinato O, Faure J, Colin T, Visvikis D

pubmed logopapersMay 13 2025
Accurate segmentation of lung tumors is essential for advancing personalized medicine in non-small cell lung cancer (NSCLC). However, stage IV NSCLC presents significant challenges due to heterogeneous tumor morphology and the presence of associated conditions including infection, atelectasis and pleural effusion. The complexity of multicentric datasets further complicates robust segmentation across diverse clinical settings. In this study, we evaluate deep-learning-based approaches for automated segmentation of advanced-stage lung tumors using 3D architectures on 387 CT scans from the Deep-Lung-IV study. Through comprehensive experiments, we assess the impact of model design, HU windowing, and dataset size on delineation performance, providing practical guidelines for robust implementation. Additionally, we propose a confidence score using deep ensembles to quantify prediction uncertainty and automate the identification of complex cases that require further review. Our results demonstrate the potential of attention-based architectures and specific preprocessing strategies to improve segmentation quality in such a challenging clinical scenario, while emphasizing the importance of uncertainty estimation to build trustworthy AI systems in medical imaging. Code is available at: https://github.com/Sacha-Dedeken/SegStageIVNSCLC.
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