Innovative AI-driven genomic and proteomic analysis platform to improve cell therapy and immuno-oncology

Proteona and AI Singapore partner to improve cell therapies and IO treatments through single cell analysis of tumors and CAR T cells

9 Sept 2019
Georgina Wynne Hughes
Editorial Assistant

Industry news

Proteona Pte. Ltd. has announced its participation in AI Singapore’s 100 Experiments (100E) program to develop AI tools for single cell multi-omics data analysis. The project is being conducted in collaboration with Prof Wong Limsoon, Kwan Im Thong Hood Cho Temple Chair Professor from the National University of Singapore (NUS) School of Computing, a leading expert in bioinformatics and computational biology. Together with Proteona bioinformaticians and data scientists, the team aims to solve key challenges in single cell data analysis using artificial intelligence tools.

A key obstacle of single cell data analysis is combining datasets from different sources such as different patient samples and obtaining robust cell clustering and cell-type annotation. Single cell analysis often leads to the discovery of novel cell populations with features that had not been previously observed. Clinical samples, such as tumor biopsies, are known to be very heterogeneous, making cell type identification very challenging. Moreover, single-cell analysis is prone to noise and batch-effects that make comparisons across experiments difficult.

As a result of these challenges, cell clustering and cell annotation usually requires extensive manual intervention. This is time consuming, requires specialized knowledge and expertise, and is prone to human error and bias.

“Batch effects are prevalent in -omics data. This is particularly pronounced in single-cell measurements. Profiles from one batch are not directly compatible with that from another batch.” says Prof Limsoon Wong, NUS School of Computing. “The AI-driven components here will facilitate a more convenient and explicit identification of the specific protein complexes and biological circuits relevant to cell-types and states.”

With this collaboration, the team will further develop their robust computational workflows for knowledge-driven analysis, with an AI-based system trained using Proteona’s in-house annotated datasets. Proteona’s ESCAPE™ RNA-Seq technology and services simultaneously measures both proteomic and transcriptional expression at single-cell resolution. The developed AI-analysis will leverage this unique modality to enable deeper insights into single-cell biology.

“An immediate outcome of this collaboration will be a tool to improve the quality of results presented to our customers. It will save them time in annotating known cell types and correcting for batch effects. This platform is also used internally as a way for building our database of cell types and cell states which is then used for better annotating our customer’s data. We will also use these tools for our internal programs in biomarker discovery and diagnostic development,” says Dr Andreas Schmidt, CEO of Proteona.

“We see the merging of biotechnology and data-driven IT as one of the biggest value drivers in the health industry. With Proteona`s single cell proteogenomic data platform the company is in a unique position to impact health decisions for therapy development and the clinic,” explains Chou Fang Soong, General Partner Pix Vine Capital, one of Proteona´s investors.

With founders Prof Gene Yeo of UCSD, Prof Jonathan Scolnick of NUS and Deputy Director of the Molecular Engineering Laboratory, A*STAR, Dr Shawn Hoon, Proteona has strong roots in cutting edge academic discoveries around the world. The Proteona - AI Singapore consortium actively seeks additional partners from the cell therapy and hematology-oncology communities to contribute to their international single cell analysis initiative.

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ProteomicsProteomics is the systemic bioinformatics study of proteins and amino acids, including their structure, size, function and identification. Tools used in proteomics include chromatography, blotting and gels, protein arrays, mass spectrometry and ELISA and associated analysis software. Analyzers and proteomic systems should be sensitive, high resolution, fast and may be automated for high-throughput.Chem / BioinformaticsCheminformatics and bioinformatics are computational techniques used in chemistry and biology, respectively, for data acquisition, processing and storage. Cheminformatics focuses on compound information, whereas bioinformatics is mainly applied to analysis and modeling of genomics, genetic and sequencing information. Hardware and software is available for data acquisition, analysis, management and storage.Cell TherapyCell therapy involves using living cells to treat diseases, often by replacing damaged cells or stimulating regeneration. Stem cell therapy and CAR-T cell therapy are examples of cutting-edge treatments in regenerative medicine and cancer immunotherapy. Browse our peer-reviewed product directory to find the best cell therapy tools, compare products, check reviews, and get pricing directly from manufacturers.Single Cell AnalysisSingle-cell analysis involves studying individual cells to gain insights into their behavior, gene expression, and function. This approach is valuable in cancer research, stem cell biology, and immunology. Explore single-cell analysis products in our peer-reviewed product directory; compare products, check reviews, and get pricing directly from manufacturers.GenomicsGenomics is the study of genomes, focusing on the sequencing, analysis, and interpretation of genetic material. It is key in understanding genetic diseases, evolutionary biology, and personalized medicine. Techniques like next-generation sequencing (NGS) are commonly used in genomics research. Browse our peer-reviewed product directory to find the best genomics tools, compare products, check reviews, and get pricing directly from manufacturers.TumorsTumor research focuses on understanding abnormal cell growth that leads to cancer. Identifying biomarkers, studying tumor microenvironments, and developing targeted therapies are critical for advancing cancer treatment. Early detection and personalized treatment options are key to improving outcomes for patients. Browse our peer-reviewed product directory to explore tools for tumor research, diagnostics, and cancer therapies; compare products, read customer reviews, and get pricing directly from manufacturers.
Innovative AI-driven genomic and proteomic analysis platform to improve cell therapy and immuno-oncology