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Multimodal imaging techniques have the potential to enhance the interpretation of histology by offering additional molecular and structural information beyond that accessible through hematoxylin and eosin (H&E) staining alone. Here, we present a quantitative approach for comparing the information content of different image modalities, such as H&E and multimodal imaging. We used a combination of deep learning and radiomics-based feature extraction with different information markers, implemented in Python 3.12, to compare the information content of the H&E stain, multimodal imaging, and the combined dataset. We also compared the information content of individual channels in the multimodal image and of different Coherent Anti-Stokes Raman Scattering (CARS) microscopy spectral channels. The quantitative measurements of information that we utilized were Shannon entropy, inverse area under the curve (1-AUC), the number of principal components describing 95% of the variance (PC95), and inverse power law fitting. For example, the combined dataset achieved an entropy value of 0.5740, compared to 0.5310 for H&E and 0.5385 for the multimodal dataset using MobileNetV2 features. The number of principal components required to explain 95 percent of the variance was also highest for the combined dataset, with 62 components, compared to 33 for H&E and 47 for the multimodal dataset. These measurements consistently showed that the combined datasets provide more information. These observations highlight the potential of multimodal combinations to enhance image-based analyses and provide a reproducible framework for comparing imaging approaches in digital pathology and biomedical image analysis.
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http://dx.doi.org/10.3390/bioengineering12080894 | DOI Listing |
Emerg Top Life Sci
September 2025
Hurdle.bio / Chronomics Ltd., London, UK.
Artificial intelligence (AI) is transforming many fields, including healthcare and medicine. In biomarker discovery, AI algorithms have had a profound impact, thanks to their ability to derive insights from complex high-dimensional datasets and integrate multi-modal datatypes (such as omics, electronic health records, imaging or sensor and wearable data). However, despite the proliferation of AI-powered biomarkers, significant hurdles still remain in translating them to the clinic and driving adoption, including lack of population diversity, difficulties accessing harmonised data, costly and time-consuming clinical studies, evolving AI regulatory frameworks and absence of scalable diagnostic infrastructure.
View Article and Find Full Text PDFRetina
September 2025
Retina Division, Stein Eye Institute, University of California of Los Angeles, Los Angeles, California.
Purpose: To describe the clinical and multimodal imaging features of a novel form of macular neovascularization (MNV), designated Type 4 MNV, defined by mixed Type 1 and Type 2 neovascularization (NV), extensive intraretinal anastomotic NV, and central posterior hyaloid fibrosis (CPHF).
Methods: This multicenter retrospective observational case series included patients with neovascular age-related macular degeneration (AMD) exhibiting both Type 1 and 2 MNV and an overlying anastomotic intraretinal NV network. This was confirmed with OCT and OCT angiography (OCTA).
Retina
September 2025
Ulucanlar Eye Training and Research Hospital, Retina Clinic of Ophthalmology Department, Ankara, Turkey.
Purpose: To compare the clinical features, multimodal imaging characteristics, and treatment outcomes of primary and secondary large retinal capillary aneurysms (LRCA).
Methods: A total of 34 eyes were included: seven with primary LRCA and 27 with secondary LRCA. All patients underwent fundus photography, optical coherence tomography (OCT), and fundus fluorescein angiography.
Cell Rep
September 2025
International Joint Laboratory for Drug Target of Critical Illnesses, School of Pharmacy, Nanjing Medical University, Nanjing 211166, China; Department of Nephrology, the First Affiliated Hospital of Nanjing Medical University, Nanjing 210029, China. Electronic address:
Neurons that encode odor information are fundamental to innate fear processes, yet how mitral/tufted (M/T) cells encode innate fear remains unknown. Here, we identify three different response patterns of M/T cells in the dorsal olfactory bulb (dOB) during active avoidance elicited by non-dehydrogenated 2,4,5-trimethylthiazole (nTMT) through in vivo calcium imaging and multielectrode recordings in mice, including enhanced responses, suppressed responses, and no response. Remarkably, suppressed response M/T cells encode active avoidance, whereas suppressed and enhanced response M/T cells jointly encode passive freezing.
View Article and Find Full Text PDFCereb Cortex
August 2025
Faculty of Psychology and Education Science, Department of Psychology, University of Geneva, Chemin des Mines 9, Geneva, 1202, Switzerland.
Language learning and use relies on domain-specific, domain-general cognitive and sensory-motor functions. Using fMRI during story listening and behavioral tests, we investigated brain-behavior associations between linguistic and non-linguistic measures in individuals with varied multilingual experience and reading skills, including typical reading participants (TRs) and dyslexic readers (DRs). Partial Least Square Correlation revealed a main component linking cognitive, linguistic, and phonological measures to amodal/associative brain areas.
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