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GENOMICS

The value of genomic analysis

Genetic heritability is responsible for 30% of individual health outcomes, but it isn’t widely used to guide disease prevention and care. Each individual carries 4-5 million genetic variants, each with differing influence on traits related to our health. The cost to sequence a genome has reduced drastically in recent years, and sequence data shows potential for more widespread use. However, the ability to read the sequence accurately and to meaningfully interpret it remain obstacles to broad adoption.

The value of genomic analysis

Improving the accuracy of genomic analysis

Sequencing genomes enables us to identify variants in a person’s DNA that indicate genetic disorders, such as an elevated risk for some types of cancer.
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Highly accurate genomes with deep neural networks

Despite rapid advances in sequencing technologies, accurately calling genetic variants present in an individual genome from billions of short, errorful sequence reads remains challenging. As published in Nature Biotechnology, DeepVariant, an open-source variant caller that uses a deep neural network to call genetic variants from next-generation DNA sequencing data, significantly improves the accuracy in identifying variant locations, reducing the error rate by more than 50%.
Winner in PrecisionFDA V2 Truth Challenge

Winner in PrecisionFDA V2 Truth Challenge

DeepVariant won awards for Best Overall accuracy in 3 of 4 instrument categories in the PrecisionFDA V2 Truth Challenge. Compared to previous state-of-the-art models, DeepVariant v1.0 significantly reduces the errors for widely-used sequencing data types, including Illumina and Pacific Biosciences.
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  • Identifying disease-causing variants in cancer patients

    Researchers wanted to understand if incorporating automated deep learning technology would improve the detection of disease-causing variants in patients with cancer. In a cross-sectional study published in JAMA of 2,367 prostate cancer and melanoma patients in the US and Europe, DeepVariant found disease-causing variants in 14% more individuals than prior state-of-the-art methods.

  • Building large-scale cohorts for genetic discovery research

    Large cohorts of sequenced individuals are the foundations for discovery of novel genetic associations with disease. We developed best practices for generating cohorts that substantially improves over previous methods, which has been adopted by the UK Biobank for its large-scale sequencing efforts.

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Improving genetic association discovery with machine learning

Discovering genetic variants associated with a trait of interest requires a large cohort of individuals with both genetic and trait information. As published in AJHG, we demonstrate that using a machine learning model to predict eye-disease-related traits from fundus images significantly improves discovery of genetic variants influencing those traits.
Pinpointing the cause of disease with a catalogue of genetic mutations

Pinpointing the cause of disease with a catalogue of genetic mutations 

AlphaMissense is an AI model which classifies missense variants. These genetic mutations can affect the function of human proteins. In some cases, they can lead to diseases such as cystic fibrosis, sickle-cell anaemia, or cancer.

We’ve released a catalogue of ‘missense’ mutations where researchers can learn more about what effect they may have.

Our partners in genomics research

Because genomic data is highly personal, to the greatest extent possible we use datasets that are fully public or are broadly available to qualified researchers. We also partner with trusted organizations that contribute scientific and technology development to improve standards in genomic analysis and enhance the utility of sequencing data.
  • DeepVariant’s precisionFDA Truth Challenge V2 submission using PacBio HiFi reads achieved the highest single-technology accuracy, which has been featured on the PacBio blog and in a Nature Biotechnology retrospective. The collaboration also successfully launched DeepConsensus, which improves HiFi yield and read quality compared to existing consensus basecalling methods.

  • The Regeneron Genetics Center, one of the world’s largest human genomic research efforts, has adopted DeepVariant and re-trained specialized models for both internal projects and the delivery of 200,000 exomes to UKBiobank.

  • Benedict Paten’s lab at UC Santa Cruz collaborated with Google on PEPPER-Deepvariant, which won best accuracy in the Oxford Nanopore Technologies category of the PrecisionFDA. The paper was also published in Nature Methods.

  • NVIDIA Clara Parabricks Pipelines software provides a suite of accelerated bioinformatic tools to support DNA and RNA applications, running on a GPU. Their implementation of DeepVariant processes a 30x whole human genome in less than 25 minutes from fastq to vcf using their latest A100 GPU.