Publications by authors named "Oliver Schoppe"

Article Synopsis
  • Whole-body imaging in mice is important for research, and manual organ segmentation is often tedious and prone to errors.
  • AIMOS is a deep learning tool that automates the segmentation of major organs and the skeleton in under a second, outperforming previous methods and matching expert quality.
  • It helps address human biases and errors by identifying uncertainty in annotation, promoting better analysis in biomedical research through scalability and reproducibility.
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Imaging techniques such as computed tomographies (CT) play a major role in clinical imaging and diagnosis of malignant lesions. In recent years, metal nanoparticle platforms enabled effective payload delivery for several imaging techniques. Due to the possibility of surface modification, metal nanoparticles are predestined to facilitate molecular tumor targeting.

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Tissue clearing methods enable the imaging of biological specimens without sectioning. However, reliable and scalable analysis of large imaging datasets in three dimensions remains a challenge. Here we developed a deep learning-based framework to quantify and analyze brain vasculature, named Vessel Segmentation & Analysis Pipeline (VesSAP).

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Optical tissue transparency permits scalable cellular and molecular investigation of complex tissues in 3D. Adult human organs are particularly challenging to render transparent because of the accumulation of dense and sturdy molecules in decades-aged tissues. To overcome these challenges, we developed SHANEL, a method based on a new tissue permeabilization approach to clear and label stiff human organs.

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Article Synopsis
  • Researchers created a new tool called DeepMACT to improve the detection and analysis of cancer metastases and the targeting of therapeutic antibodies throughout the body.
  • The tool uses enhanced imaging techniques to boost the visibility of cancer cells and employs deep learning algorithms for precise, automated quantification of metastases.
  • DeepMACT successfully evaluated different cancer types, enabling detailed analysis of metastatic characteristics, which could significantly advance the development of effective antibody therapies before clinical trials.
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Cortical sensory neurons are commonly characterized using the receptive field, the linear dependence of their response on the stimulus. In primary auditory cortex neurons can be characterized by their spectrotemporal receptive fields, the spectral and temporal features of a sound that linearly drive a neuron. However, receptive fields do not capture the fact that the response of a cortical neuron results from the complex nonlinear network in which it is embedded.

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Good metrics of the performance of a statistical or computational model are essential for model comparison and selection. Here, we address the design of performance metrics for models that aim to predict neural responses to sensory inputs. This is particularly difficult because the responses of sensory neurons are inherently variable, even in response to repeated presentations of identical stimuli.

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Unlabelled: Adaptation to stimulus statistics, such as the mean level and contrast of recently heard sounds, has been demonstrated at various levels of the auditory pathway. It allows the nervous system to operate over the wide range of intensities and contrasts found in the natural world. Yet current standard models of the response properties of auditory neurons do not incorporate such adaptation.

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Models are valuable tools to assess how deeply we understand complex systems: only if we are able to replicate the output of a system based on the function of its subcomponents can we assume that we have probably grasped its principles of operation. On the other hand, discrepancies between model results and measurements reveal gaps in our current knowledge, which can in turn be targeted by matched experiments. Models of the auditory periphery have improved greatly during the last decades, and account for many phenomena observed in experiments.

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