Difference between revisions of "Bioinformatics"
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== PrimateAI-3D == | == PrimateAI-3D == | ||
+ | * [https://www.illumina.com/ Illumina, Inc.] | ||
+ | * [https://github.com/Illumina/PrimateAI-3D GitHub - Illumina/PrimateAI-3D] | ||
+ | * [https://www.illumina.com/science/genomics-research/articles/primateai-3d.html (1) Improving genetic risk prediction and drug target discovery using ....] | ||
* [https://thenextweb.com/news/ai-trained-on-ape-dna-predicts-genetic-disease-risks-humans AI trained on ape DNA predicts genetic disease risks for humans | Ioanna Lykiardopoulou - TNW] ... Our primate relatives can teach us a lot about our own genes | * [https://thenextweb.com/news/ai-trained-on-ape-dna-predicts-genetic-disease-risks-humans AI trained on ape DNA predicts genetic disease risks for humans | Ioanna Lykiardopoulou - TNW] ... Our primate relatives can teach us a lot about our own genes | ||
+ | * [https://finance.yahoo.com/news/illumina-takes-ai-genomics-launch-145421268.html Illumina Takes AI to Genomics: Launch of PrimateAI-3D for Accurate Disease Prediction | Nabaparna Bhattacharya - Yahoo!Finance] | ||
+ | * [https://www.washingtonpost.com/science/2023/06/01/primate-ai-genome-variants (2) New AI tool searches genetic haystacks to find disease-causing variants ....] | ||
+ | * [https://www.science.org/doi/10.1126/science.abo1131 Rare penetrant mutations confer severe risk of common diseases.] | ||
PrimateAI-3D is built on deep-learning language architectures similar to those used in ChatGPT, but designed to model genomic rather than linguistic sequences. The team used natural selection to train its parameters, by presenting it with mutations that are ruled out for disease in our primate relatives. This way, the algorithm learned to recognise benign genetic variants and, by process of elimination, mutations that are likely to cause disease. | PrimateAI-3D is built on deep-learning language architectures similar to those used in ChatGPT, but designed to model genomic rather than linguistic sequences. The team used natural selection to train its parameters, by presenting it with mutations that are ruled out for disease in our primate relatives. This way, the algorithm learned to recognise benign genetic variants and, by process of elimination, mutations that are likely to cause disease. | ||
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Then the scientists applied PrimateAI-3D to identify potentially harmful mutations in humans, using health records and gene variant data of over 400 people who have donated samples to the [https://www.ukbiobank.ac.uk/ UK Biobank project]. They found that the algorithm showed “impressive improvements” in predicting humans’ increased genetic risk for common diseases. | Then the scientists applied PrimateAI-3D to identify potentially harmful mutations in humans, using health records and gene variant data of over 400 people who have donated samples to the [https://www.ukbiobank.ac.uk/ UK Biobank project]. They found that the algorithm showed “impressive improvements” in predicting humans’ increased genetic risk for common diseases. | ||
+ | PrimateAI-3D is a deep-learning network developed by Illumina that is trained on 4.5 million common genetic variants from 233 primate species. This state-of-the-art classifier accurately quantifies missense variant pathogenicity in humans, which improves discovery of genes affecting clinical phenotypes. It is used to improve genetic risk prediction and drug target discovery. The algorithm scans about 70 million genetic variants, a selection that is more than 1,000 times as large as ClinVar. The 3D in the name refers to the three-dimensional structure of proteins, a key factor in distinguishing which mutations will wreak havoc. | ||
== What Came First, Cells or Viruses? == | == What Came First, Cells or Viruses? == |
Revision as of 20:59, 12 June 2023
Youtube search... ...Google search
- Case Studies
- COVID-19
- Bio-inspired Computing
- COVID-19
- DIY Human CRISPR Guide | The Odin
- Machine learning spots natural selection at work in human genome | Amy Maxmen
- DeepVariant | Google ...an analysis pipeline that uses a Deep Neural Network (DNN) to call genetic variants from next-generation DNA sequencing data.
An interdisciplinary field that develops methods and software tools for understanding biological data, in particular when the data sets are large and complex. As an interdisciplinary field of science, bioinformatics combines biology, computer science, information engineering, mathematics and statistics to analyze and interpret the biological data. Bioinformatics has been used for in silico analyses of biological queries using mathematical and statistical techniques.
"...all biology is computational biology" | Florian Markowetz
Contents
Bioinformatics Pipelines
Bioinformatics includes biological studies that use computer programming as part of their methodology, as well as a specific analysis "pipelines" that are repeatedly used, particularly in the field of genomics. Common uses of bioinformatics include the identification of candidates genes and single nucleotide polymorphisms (SNPs). Often, such identification is made with the aim of better understanding the genetic basis of disease, unique adaptations, desirable properties (esp. in agricultural species), or differences between populations. In a less formal way, bioinformatics also tries to understand the organisational principles within nucleic acid and protein sequences, called proteomics. Wikipedia
Using Computer Code to Decipher Genetic Code: Bioinformatics 101
ROSALIND Platform
Learning bioinformatics usually requires solving computational problems of varying difficulty that are extracted from real challenges of molecular biology. To make learning bioinformatics fun and easy, we have founded Rosalind, a platform for learning bioinformatics through problem solving. ROSALIND offers an array of intellectually stimulating problems that grow in biological and computational complexity; each problem is checked automatically, so that the only resource required to learn bioinformatics is an internet connection. ROSALIND also promises to facilitate improvements in standard bioinformatics education by providing a vital teaching aid and a central homework resource. ROSALIND is inspired by Project Euler, Google Code Jam, and the ever growing movement of free online courses. The project's name commemorates Rosalind Franklin, whose X-ray crystallography with Raymond Gosling facilitated the discovery of the DNA double helix by Watson and Crick. ROSALIND
CRISPR
Youtube search... ...Google search
CRISPR Kit
CRISPR Explained
PrimateAI-3D
- Illumina, Inc.
- GitHub - Illumina/PrimateAI-3D
- (1) Improving genetic risk prediction and drug target discovery using ....
- AI trained on ape DNA predicts genetic disease risks for humans | Ioanna Lykiardopoulou - TNW ... Our primate relatives can teach us a lot about our own genes
- Illumina Takes AI to Genomics: Launch of PrimateAI-3D for Accurate Disease Prediction | Nabaparna Bhattacharya - Yahoo!Finance
- (2) New AI tool searches genetic haystacks to find disease-causing variants ....
- Rare penetrant mutations confer severe risk of common diseases.
PrimateAI-3D is built on deep-learning language architectures similar to those used in ChatGPT, but designed to model genomic rather than linguistic sequences. The team used natural selection to train its parameters, by presenting it with mutations that are ruled out for disease in our primate relatives. This way, the algorithm learned to recognise benign genetic variants and, by process of elimination, mutations that are likely to cause disease.
Then the scientists applied PrimateAI-3D to identify potentially harmful mutations in humans, using health records and gene variant data of over 400 people who have donated samples to the UK Biobank project. They found that the algorithm showed “impressive improvements” in predicting humans’ increased genetic risk for common diseases.
PrimateAI-3D is a deep-learning network developed by Illumina that is trained on 4.5 million common genetic variants from 233 primate species. This state-of-the-art classifier accurately quantifies missense variant pathogenicity in humans, which improves discovery of genes affecting clinical phenotypes. It is used to improve genetic risk prediction and drug target discovery. The algorithm scans about 70 million genetic variants, a selection that is more than 1,000 times as large as ClinVar. The 3D in the name refers to the three-dimensional structure of proteins, a key factor in distinguishing which mutations will wreak havoc.
What Came First, Cells or Viruses?
Youtube search... ...Google search
- Markov Model (Chain, Discrete Time, Continuous Time, Hidden)
- Phylogenetic Hidden Markov Models | Adam Siepel and David Haussler
- Phylogeny Programs | Joe Felsenstein - University of Washington Here are 392 phylogeny packages and 54 free web servers ... PHYLIP (the PHYLogeny Inference Package) Methods that are available in the package include parsimony, distance matrix, and likelihood methods, including bootstrapping and consensus trees. Data types that can be handled include molecular sequences, gene frequencies, restriction sites and fragments, distance matrices, and discrete characters.
Virus & Consciousness
- An Ancient Virus May Be Responsible for Human Consciousness | Rafi Letzter - Live Science
- Unraveling the Human Genome: 6 Molecular Milestones | Stephanie Pappas - Live Science
Long ago, a virus bound its genetic code to the genome of four-limbed animals. That snippet of code is still very much alive in humans' brains today, where it does the very viral task of packaging up genetic information and sending it from nerve cells to their neighbors in little capsules that look a whole lot like viruses themselves. And these little packages of information might be critical elements of how nerves communicate and reorganize over time — tasks thought to be necessary for higher-order thinking...
Though it may sound surprising that bits of human genetic code come from viruses, it's actually more common than you might think: A review published in Cell in 2016 found that between 40 and 80 percent of the human genome arrived from some archaic viral invasion.
Bioinformatics Project from Scratch
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