Literature DB >> 32359808

Machine learning, the kidney, and genotype-phenotype analysis.

Rachel S G Sealfon1, Laura H Mariani2, Matthias Kretzler3, Olga G Troyanskaya4.   

Abstract

With biomedical research transitioning into data-rich science, machine learning provides a powerful toolkit for extracting knowledge from large-scale biological data sets. The increasing availability of comprehensive kidney omics compendia (transcriptomics, proteomics, metabolomics, and genome sequencing), as well as other data modalities such as electronic health records, digital nephropathology repositories, and radiology renal images, makes machine learning approaches increasingly essential for analyzing human kidney data sets. Here, we discuss how machine learning approaches can be applied to the study of kidney disease, with a particular focus on how they can be used for understanding the relationship between genotype and phenotype.
Copyright © 2020 International Society of Nephrology. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  deep learning; genotype; machine learning

Year:  2020        PMID: 32359808      PMCID: PMC8048707          DOI: 10.1016/j.kint.2020.02.028

Source DB:  PubMed          Journal:  Kidney Int        ISSN: 0085-2538            Impact factor:   10.612


  76 in total

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2.  Association of trypanolytic ApoL1 variants with kidney disease in African Americans.

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Journal:  Science       Date:  2010-07-15       Impact factor: 47.728

Review 3.  Methods of integrating data to uncover genotype-phenotype interactions.

Authors:  Marylyn D Ritchie; Emily R Holzinger; Ruowang Li; Sarah A Pendergrass; Dokyoon Kim
Journal:  Nat Rev Genet       Date:  2015-01-13       Impact factor: 53.242

Review 4.  Coming of age: ten years of next-generation sequencing technologies.

Authors:  Sara Goodwin; John D McPherson; W Richard McCombie
Journal:  Nat Rev Genet       Date:  2016-05-17       Impact factor: 53.242

5.  Predicting Splicing from Primary Sequence with Deep Learning.

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Journal:  Cell       Date:  2019-01-17       Impact factor: 41.582

6.  Renal gene and protein expression signatures for prediction of kidney disease progression.

Authors:  Wenjun Ju; Felix Eichinger; Markus Bitzer; Jun Oh; Shannon McWeeney; Celine C Berthier; Kerby Shedden; Clemens D Cohen; Anna Henger; Stefanie Krick; Jeffrey B Kopp; Christian J Stoeckert; Steven Dikman; Bernd Schröppel; David B Thomas; Detlef Schlondorff; Matthias Kretzler; Erwin P Böttinger
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7.  Using machine learning and an ensemble of methods to predict kidney transplant survival.

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8.  Measurement of Glomerular Filtration Rate using Quantitative SPECT/CT and Deep-learning-based Kidney Segmentation.

Authors:  Junyoung Park; Sungwoo Bae; Seongho Seo; Sohyun Park; Ji-In Bang; Jeong Hee Han; Won Woo Lee; Jae Sung Lee
Journal:  Sci Rep       Date:  2019-03-12       Impact factor: 4.379

9.  Deep learning of the tissue-regulated splicing code.

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Journal:  Bioinformatics       Date:  2014-06-15       Impact factor: 6.937

10.  PathoSpotter-K: A computational tool for the automatic identification of glomerular lesions in histological images of kidneys.

Authors:  George O Barros; Brenda Navarro; Angelo Duarte; Washington L C Dos-Santos
Journal:  Sci Rep       Date:  2017-04-24       Impact factor: 4.379

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  6 in total

Review 1.  Advances in proteomic profiling of pediatric kidney diseases.

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Journal:  Pediatr Nephrol       Date:  2022-02-26       Impact factor: 3.651

2.  Deep-Learning-Driven Quantification of Interstitial Fibrosis in Digitized Kidney Biopsies.

Authors:  Yi Zheng; Clarissa A Cassol; Saemi Jung; Divya Veerapaneni; Vipul C Chitalia; Kevin Y M Ren; Shubha S Bellur; Peter Boor; Laura M Barisoni; Sushrut S Waikar; Margrit Betke; Vijaya B Kolachalama
Journal:  Am J Pathol       Date:  2021-05-23       Impact factor: 5.770

3.  Eye-color and Type-2 diabetes phenotype prediction from genotype data using deep learning methods.

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Journal:  BMC Bioinformatics       Date:  2021-04-19       Impact factor: 3.169

4.  Machine Learning Applications in Nephrology: A Bibliometric Analysis Comparing Kidney Studies to Other Medicine Subspecialities.

Authors:  Ashish Verma; Vipul C Chitalia; Sushrut S Waikar; Vijaya B Kolachalama
Journal:  Kidney Med       Date:  2021-06-27

5.  Using expression quantitative trait loci data and graph-embedded neural networks to uncover genotype-phenotype interactions.

Authors:  Xinpeng Guo; Jinyu Han; Yafei Song; Zhilei Yin; Shuaichen Liu; Xuequn Shang
Journal:  Front Genet       Date:  2022-08-15       Impact factor: 4.772

Review 6.  How will artificial intelligence and bioinformatics change our understanding of IgA Nephropathy in the next decade?

Authors:  Roman David Bülow; Daniel Dimitrov; Peter Boor; Julio Saez-Rodriguez
Journal:  Semin Immunopathol       Date:  2021-04-09       Impact factor: 9.623

  6 in total

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