Javascript must be enabled to continue!
Assignment of unimodal probability distribution models for quantitative morphological phenotyping
View through CrossRef
AbstractBackgroundCell morphology is a complex and integrative readout, and therefore, an attractive measurement for assessing the effects of genetic and chemical perturbations to cells. Microscopic images provide rich information on cell morphology; therefore, subjective morphological features are frequently extracted from digital images. However, measured datasets are fundamentally noisy; thus, estimation of the true values is an ultimate goal in quantitative morphological phenotyping. Ideal image analyses require precision, such as proper probability distribution analyses to detect subtle morphological changes, recall to minimize artifacts due to experimental error, and reproducibility to confirm the results.ResultsHere, we present UNIMO (UNImodal MOrphological data), a reliable pipeline for precise detection of subtle morphological changes by assigning unimodal probability distributions to morphological features of the budding yeast cells. By defining the data type, followed by validation using the model selection method, examination of 33 probability distributions revealed nine best-fitting probability distributions. The modality of the distribution was then clarified for each morphological feature using a probabilistic mixture model. Using a reliable and detailed set of experimental log data of wild-type morphological replicates, we considered the effects of confounding factors. As a result, most of the yeast morphological parameters exhibited unimodal distributions that can be used as basic tools for powerful downstream parametric analyses. The power of the proposed pipeline was confirmed by reanalyzing morphological changes in non-essential yeast mutants and detecting 1284 more mutants with morphological defects compared with a conventional approach (Box–Cox transformation). Furthermore, the combined use of canonical correlation analysis permitted global views on the cellular network as well as new insights into possible gene functions.ConclusionsBased on statistical principles, we showed that UNIMO offers better predictions of the true values of morphological measurements. We also demonstrated how these concepts can provide biologically important information. This study draws attention to the necessity of employing a proper approach to do more with less.
Springer Science and Business Media LLC
Title: Assignment of unimodal probability distribution models for quantitative morphological phenotyping
Description:
AbstractBackgroundCell morphology is a complex and integrative readout, and therefore, an attractive measurement for assessing the effects of genetic and chemical perturbations to cells.
Microscopic images provide rich information on cell morphology; therefore, subjective morphological features are frequently extracted from digital images.
However, measured datasets are fundamentally noisy; thus, estimation of the true values is an ultimate goal in quantitative morphological phenotyping.
Ideal image analyses require precision, such as proper probability distribution analyses to detect subtle morphological changes, recall to minimize artifacts due to experimental error, and reproducibility to confirm the results.
ResultsHere, we present UNIMO (UNImodal MOrphological data), a reliable pipeline for precise detection of subtle morphological changes by assigning unimodal probability distributions to morphological features of the budding yeast cells.
By defining the data type, followed by validation using the model selection method, examination of 33 probability distributions revealed nine best-fitting probability distributions.
The modality of the distribution was then clarified for each morphological feature using a probabilistic mixture model.
Using a reliable and detailed set of experimental log data of wild-type morphological replicates, we considered the effects of confounding factors.
As a result, most of the yeast morphological parameters exhibited unimodal distributions that can be used as basic tools for powerful downstream parametric analyses.
The power of the proposed pipeline was confirmed by reanalyzing morphological changes in non-essential yeast mutants and detecting 1284 more mutants with morphological defects compared with a conventional approach (Box–Cox transformation).
Furthermore, the combined use of canonical correlation analysis permitted global views on the cellular network as well as new insights into possible gene functions.
ConclusionsBased on statistical principles, we showed that UNIMO offers better predictions of the true values of morphological measurements.
We also demonstrated how these concepts can provide biologically important information.
This study draws attention to the necessity of employing a proper approach to do more with less.
Related Results
Application of unimodal probability distribution models for morphological phenotyping of budding yeast
Application of unimodal probability distribution models for morphological phenotyping of budding yeast
Abstract
Morphological phenotyping of the budding yeast Saccharomyces cerevisiae has helped to greatly clarify the functions of genes and increase our understanding ...
Leveraging Image Analysis for High-throughput Phenotyping of Legume Plants
Leveraging Image Analysis for High-throughput Phenotyping of Legume Plants
Background: The advancements achieved in artificial intelligence (AI) technology in recent decades have not yet been equaled by agricultural phenotyping approaches that are both ra...
Convolutional Neural Networks for Image-Based High-Throughput Plant Phenotyping: A Review
Convolutional Neural Networks for Image-Based High-Throughput Plant Phenotyping: A Review
Plant phenotyping has been recognized as a bottleneck for improving the efficiency of breeding programs, understanding plant-environment interactions, and managing agricultural sys...
The Impact of “Possible Patients” on Phenotyping Algorithms: Electronic Phenotype Algorithms Can Only Be Reproduced by Sharing Detailed Annotation Criteria
The Impact of “Possible Patients” on Phenotyping Algorithms: Electronic Phenotype Algorithms Can Only Be Reproduced by Sharing Detailed Annotation Criteria
Phenotyping is an automated technique for identifying patients diagnosed with a particular disease based on electronic health records (EHRs). To evaluate phenotyping algorithms, wh...
Changes in General and Specific Teacher Self-Efficacy Related to: Professional Development Follow-up, Assignment, and Career Stage
Changes in General and Specific Teacher Self-Efficacy Related to: Professional Development Follow-up, Assignment, and Career Stage
<p><b>Purpose:</b> The purpose of this project was to study the changes in general and specific teacher self-efficacy related to the frequency of Professional De...
Changes in General and Specific Teacher Self-Efficacy Related to: Professional Development Follow-up, Assignment, and Career Stage
Changes in General and Specific Teacher Self-Efficacy Related to: Professional Development Follow-up, Assignment, and Career Stage
<p><b>Purpose:</b> The purpose of this project was to study the changes in general and specific teacher self-efficacy related to the frequency of Professional De...
Gender assignment in language contact
Gender assignment in language contact
Abstract
This paper deals with an important aspect of the integration of loan nouns into the grammatical systems of languages attesting to grammatical gender, namely...
Research on optimization of index system design and its inspection method
Research on optimization of index system design and its inspection method
Purpose
To construct a scientific and reasonable indicator system, it is necessary to design a set of standardized indicator primary selection and optimization inspection process. ...

