This paper introduces a novel approach for assessing multiple patterns in biological imaging datasets. The developed tool should be able to provide most probable structure of a dataset of images that consists of biological patterns not encountered during the model training process. The tool includes two major parts: (1) feature learning and extraction pipeline and (2) subsequent clustering with estimation of number of classes. The feature-learning part includes two deep-learning techniques and a feature quantitation pipeline as a benchmark method. Clustering includes three non-parametric methods. K-means clustering is employed for validation and hypothesis testing by comparing results with provided ground truth. The most appropriate methods...
University of Minnesota Ph.D. dissertation. 2018. Major: Computer Science. Advisors: Nikolaos Papani...
Quantitative microscopy deals with the extraction of quantitative measurements from samples observed...
Inferring precise phenotypic patterns from population-scale clinical data is a core computational ta...
This paper introduces a novel approach for assessing multiple patterns in biological imaging dataset...
The conventional convolution filter in deep architectures has proven its capability to extract seman...
Machine learning for medical imaging not only requires sufficient amounts of data for training and t...
The volume of biomedical data available to the machine learning community grows very rapidly. A rati...
Biological data, and in particular imaging data, have experienced an exponential growth in terms of ...
High-throughput screening technologies, such as robot-controlled microscopes and whole genome sequen...
Machine learning (ML) techniques have revolutionized the way of data classification, clustering, seg...
A central theme in learning from image data is to develop appropriate image representations for the ...
This thesis presents automatic image and data analysis methods to facilitate and improve microscopy-...
Abstract—Dealing with data means to group information into a set of categories either in order to le...
Unprecedented amount of data coming from various high-throughput techniques in biomedical research ...
The availability of annotated image datasets and recent advances in supervised deep learning methods...
University of Minnesota Ph.D. dissertation. 2018. Major: Computer Science. Advisors: Nikolaos Papani...
Quantitative microscopy deals with the extraction of quantitative measurements from samples observed...
Inferring precise phenotypic patterns from population-scale clinical data is a core computational ta...
This paper introduces a novel approach for assessing multiple patterns in biological imaging dataset...
The conventional convolution filter in deep architectures has proven its capability to extract seman...
Machine learning for medical imaging not only requires sufficient amounts of data for training and t...
The volume of biomedical data available to the machine learning community grows very rapidly. A rati...
Biological data, and in particular imaging data, have experienced an exponential growth in terms of ...
High-throughput screening technologies, such as robot-controlled microscopes and whole genome sequen...
Machine learning (ML) techniques have revolutionized the way of data classification, clustering, seg...
A central theme in learning from image data is to develop appropriate image representations for the ...
This thesis presents automatic image and data analysis methods to facilitate and improve microscopy-...
Abstract—Dealing with data means to group information into a set of categories either in order to le...
Unprecedented amount of data coming from various high-throughput techniques in biomedical research ...
The availability of annotated image datasets and recent advances in supervised deep learning methods...
University of Minnesota Ph.D. dissertation. 2018. Major: Computer Science. Advisors: Nikolaos Papani...
Quantitative microscopy deals with the extraction of quantitative measurements from samples observed...
Inferring precise phenotypic patterns from population-scale clinical data is a core computational ta...