Joachim Weis’s scientific contributions

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Publications (1)


Fig. 4 | Patch sizes and magnifications employed by studies. Studies were taken into account if at least one of the two pieces of information was specified. Other patch sizes and magnifications employed by single studies (e.g., 150 × 150 pixels, 4x magnification) are not shown.
Fig. 5 | Convolutional neural network architectures employed by studies. With only a few exceptions all convolutional neural networks were pre-trained using the ImageNet dataset. Except for ResNet architectures exact variants of stated architectures are not shown. "Custom" refers to custom (i.e., self-configured) architectures.
Fig. 6 | Learning paradigms employed by studies. Usage of regions of interest, weakly-supervised learning and multiple-instance learning by all 70 deep learningbased studies included in this review distributed by year of publication. The methodological differences of the three approaches are explained in Table 2.
Overview of all studies related to survival prediction
Applications of artificial intelligence in the analysis of histopathology images of gliomas: a review
  • Article
  • Full-text available

July 2024

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66 Reads

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10 Citations

npj Imaging

Jan-Philipp Redlich

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Friedrich Feuerhake

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Joachim Weis

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[...]

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André Homeyer

In recent years, the diagnosis of gliomas has become increasingly complex. Analysis of glioma histopathology images using artificial intelligence (AI) offers new opportunities to support diagnosis and outcome prediction. To give an overview of the current state of research, this review examines 83 publicly available research studies that have proposed AI-based methods for whole-slide histopathology images of human gliomas, covering the diagnostic tasks of subtyping (23/83), grading (27/83), molecular marker prediction (20/83), and survival prediction (29/83). All studies were reviewed with regard to methodological aspects as well as clinical applicability. It was found that the focus of current research is the assessment of hematoxylin and eosin-stained tissue sections of adult-type diffuse gliomas. The majority of studies (52/83) are based on the publicly available glioblastoma and low-grade glioma datasets from The Cancer Genome Atlas (TCGA) and only a few studies employed other datasets in isolation (16/83) or in addition to the TCGA datasets (15/83). Current approaches mostly rely on convolutional neural networks (63/83) for analyzing tissue at 20x magnification (35/83). A new field of research is the integration of clinical data, omics data, or magnetic resonance imaging (29/83). So far, AI-based methods have achieved promising results, but are not yet used in real clinical settings. Future work should focus on the independent validation of methods on larger, multi-site datasets with high-quality and up-to-date clinical and molecular pathology annotations to demonstrate routine applicability.

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Citations (1)


... Further, in scenarios with limited labeled data, few-shot learning techniques have made significant progress. The best methods have achieved accuracies exceeding 70%, 80%, and 85% in 5-way 1-shot, 5-way 5-shot, and 5-way 10-shot cases, respectively [174]. ...

Reference:

The Diagnostic Classification of the Pathological Image Using Computer Vision
Applications of artificial intelligence in the analysis of histopathology images of gliomas: a review

npj Imaging