A new way to visualize mountains of biological data

A new way to visualize mountains of biological data
A general example of a type of visual that a graph neural network can create with provided biological data. Credit: University of Missouri

Studying genetic material on a cellular level, such as single-cell RNA-sequencing, can provide scientists with a detailed, high-resolution view of biological processes at work. This level of detail helps scientists determine the health of tissues and organs, and better understand the development of diseases such as Alzheimer's that impacts millions of people. However, a lot of data is also generated, and leads to the need for an efficient, easy-to-use way to analyze it.

Now, a team of engineers and scientists from the University of Missouri and the Ohio State University have created a new way to analyze data from single-cell RNA-sequencing by using a called "." This method uses the power of computers to intelligently analyze large amounts of data and help scientists draw faster conclusions and move to the next stage of the research. Their methodology is detailed in a new paper published by Nature Communications.

"Single cell genetic profiling is on the cutting edge of today's technological advances because it measures how many genes are present and how they are expressed from the level of an individual biological cell," said Dong Xu, a professor in the MU College of Engineering. "At a minimum, there could be tens of thousands of cells being analyzed in this manner, so there ends up being a huge amount of data collected. Currently, determining conclusions from this type of data can be challenging because a lot of data must be filtered through in order to find what researchers are looking for. So, we applied one of the newest machine-learning methods to tackle this problem—a graph neural network."

After computers intelligently analyze the data through a machine learning process, the graph neural network then takes the results and creates a visual representation of the data to help easily identify patterns. The graph is made up of dots—each dot representative of a cell—and similar types of cells are color coded for easy recognition. Xu said precision medicine is a good example of how RNA-sequencing can be used.

"With this data, scientists can study the interactions between cells within the micro-environment of a cancerous tissue, or watch the T-cells, B-cells and all try to attack the cancerous cells," Xu said. "Therefore, in cases where a person has a strong immune system, and the cancer hasn't fully developed yet, we can learn how the cancer can possibly be killed at an early stage, and we have our results sooner because of machine learning, which leads us to a viable treatment faster."

Xu believes this is a great example of how engineers and biologists can work together to study problems or issues in biology. He hopes this method can be used by biologists as a new tool to help solve complex biological questions, such as a possible treatment for Alzheimer's disease.

More information: Juexin Wang et al, scGNN is a novel graph neural network framework for single-cell RNA-Seq analyses, Nature Communications (2021). DOI: 10.1038/s41467-021-22197-x

Journal information: Nature Communications

Citation: A new way to visualize mountains of biological data (2021, March 25) retrieved 1 April 2023 from https://phys.org/news/2021-03-visualize-mountains-biological.html
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