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1.
Zebrafish ; 19(6): 213-217, 2022 12.
Article in English | MEDLINE | ID: mdl-36067119

ABSTRACT

The article assesses the developments in automated phenotype pattern recognition: Potential spikes in classification performance, even when facing the common small-scale biomedical data set, and as a reader, you will find out about changes in the development effort and complexity for researchers and practitioners. After reading, you will be aware of the benefits and unreasonable effectiveness and ease of use of an automated end-to-end deep learning pipeline for classification tasks of biomedical perception systems.


Subject(s)
Image Processing, Computer-Assisted , Zebrafish , Animals , Image Processing, Computer-Assisted/standards , Phenotype , Zebrafish/classification , Zebrafish/genetics
2.
PLoS One ; 17(2): e0263656, 2022.
Article in English | MEDLINE | ID: mdl-35134081

ABSTRACT

Deep learning increasingly accelerates biomedical research, deploying neural networks for multiple tasks, such as image classification, object detection, and semantic segmentation. However, neural networks are commonly trained supervised on large-scale, labeled datasets. These prerequisites raise issues in biomedical image recognition, as datasets are generally small-scale, challenging to obtain, expensive to label, and frequently heterogeneously labeled. Furthermore, heterogeneous labels are a challenge for supervised methods. If not all classes are labeled for an individual sample, supervised deep learning approaches can only learn on a subset of the dataset with common labels for each individual sample; consequently, biomedical image recognition engineers need to be frugal concerning their label and ground truth requirements. This paper discusses the effects of frugal labeling and proposes to train neural networks for multi-class semantic segmentation on heterogeneously labeled data based on a novel objective function. The objective function combines a class asymmetric loss with the Dice loss. The approach is demonstrated for training on the sparse ground truth of a heterogeneous labeled dataset, training within a transfer learning setting, and the use-case of merging multiple heterogeneously labeled datasets. For this purpose, a biomedical small-scale, multi-class semantic segmentation dataset is utilized. The heartSeg dataset is based on the medaka fish's position as a cardiac model system. Automating image recognition and semantic segmentation enables high-throughput experiments and is essential for biomedical research. Our approach and analysis show competitive results in supervised training regimes and encourage frugal labeling within biomedical image recognition.


Subject(s)
Image Interpretation, Computer-Assisted/methods , Image Processing, Computer-Assisted/methods , Biological Phenomena , Deep Learning , Humans , Models, Theoretical , Neural Networks, Computer , Semantics
3.
Zebrafish ; 16(6): 542-545, 2019 12.
Article in English | MEDLINE | ID: mdl-31536467

ABSTRACT

Medaka (Oryzias latipes) and zebrafish (Danio rerio) contribute substantially to our understanding of the genetic and molecular etiology of human cardiovascular diseases. In this context, the quantification of important cardiac functional parameters is fundamental. We have developed a framework that segments the ventricle of a medaka hatchling from image sequences and subsequently quantifies ventricular dimensions.


Subject(s)
Heart Ventricles/anatomy & histology , Machine Learning , Oryzias/anatomy & histology , Animals
4.
Bioengineered ; 7(4): 261-5, 2016 Jul 03.
Article in English | MEDLINE | ID: mdl-27285638

ABSTRACT

Over the last years, the zebrafish (Danio rerio) has become a key model organism in genetic and chemical screenings. A growing number of experiments and an expanding interest in zebrafish research makes it increasingly essential to automatize the distribution of embryos and larvae into standard microtiter plates or other sample holders for screening, often according to phenotypical features. Until now, such sorting processes have been carried out by manually handling the larvae and manual feature detection. Here, a prototype platform for image acquisition together with a classification software is presented. Zebrafish embryos and larvae and their features such as pigmentation are detected automatically from the image. Zebrafish of 4 different phenotypes can be classified through pattern recognition at 72 h post fertilization (hpf), allowing the software to classify an embryo into 2 distinct phenotypic classes: wild-type versus variant. The zebrafish phenotypes are classified with an accuracy of 79-99% without any user interaction. A description of the prototype platform and of the algorithms for image processing and pattern recognition is presented.


Subject(s)
Pattern Recognition, Automated , Zebrafish/embryology , Zebrafish/genetics , Algorithms , Animals , High-Throughput Screening Assays , Image Processing, Computer-Assisted , Larva/genetics , Larva/metabolism , Models, Genetic , Phenotype , Software
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