News Release

Data-processing tool could enable better early stage cancer detection

Rice-developed platform sets new standard for single-cell sequencing data integration

Peer-Reviewed Publication

Rice University

researcher

image: 

Mohammadamin Edrisi is a Rice University graduate student and lead author on a paper published in Nature Communications.
 

view more 

Credit: (Photo by Jeff Fitlow/Rice University)

Cancers begin with abnormal changes in individual cells, and the ability to track the accumulation of mutations at the single-cell level can shed new light on the early stages of the disease. Such knowledge could enable more effective early detection and treatment options for patients as well as more accurate predictions of disease progression.

According to a paper in Nature Communications, a team of Rice University researchers led by Luay Nakhleh has developed a platform for integrating DNA and RNA data from single-cell sequencing with greater speed and precision than more recent, state-of-the-art technologies. The method, mapping cross domain nucleic acid or MaCroDNA, relies on a classical algorithm to identify matching pairs of data from DNA ⎯ the genetic blueprint of a cell ⎯ and RNA ⎯ a cell’s instruction manual for protein assembly.

“Imagine you are given two large sets of photos of cars with the license plates and other identifying features blurred,” said Mohammadamin Edrisi, a Rice Ph.D. student in computer science and lead author on the study. “One set contains photos of the cars taken from the front, while the other set has photos of the back of the cars, and someone asks you to find the pairs of photos that belong to the same car. This is a metaphor for the problem we have tried to solve. The cars are cancer cells, and the two sets of photos are DNA and RNA data measurements.”

In fact, the scenario that MaCroDNA is designed to address is more complex than that.

“In a typical cancer single-cell sequencing experiment, the DNA and RNA data sets are obtained from different cells in the tumor sample,” said Nakhleh, the senior author on the study. “So the matching in such a scenario happens between cells that we know are not the same cells.

“To continue the analogy, think of each photo as being taken of the front or back of a different Toyota car, and we want to match pairs of photos that belong to a car of the same model — the front and back of a Toyota Camry, of a Toyota Corolla, etc. Different car models here are analogous to different clones within a heterogenous tumor, where each clone is expected to have very similar, yet not completely identical, DNA and RNA signatures across all cells within the clone.”

Single-cell sequencing has developed significantly over the past decade, driving discovery across various fields of biology. This sequencing technique is an effective tool for studying how changes at the level of the genetic code impact cells’ makeup or functioning, making it easier to track the types of transformations that turn a population of healthy cells into malignant tissue.

“Cancer cells demonstrate abnormal RNA patterns, and one of the reasons for that is DNA mutations,” Edrisi said.

In their quest to identify the best tool for the task, the researchers tested a variety of methods against a real biological dataset with known matching DNA-RNA pairs.

“We tested the state-of-the-art method ⎯ named clonealign ⎯ and the other widely used methods using a real dataset with ground truth information for accuracy measurement,” Edrisi said. “Interestingly, using this dataset was one of the novelties in our work. Previous studies relied on simulated data for accuracy measurements, even though there is no scientific consensus as to how to go about simulating such data.”

Of the different machine learning technologies they tested, the researchers found that using a classical correlation coefficient and the maximum weighted bipartite matching algorithm yielded the most accurate results. In other words, MaCroDNA outperformed clonealign by a significant margin.

“The surprising part of our work was that using the classical correlation instead of clonealign’s complicated formula and incorporating it in an algorithm from the 1950s led to the best accuracy we have ever witnessed,” Edrisi said. “The lesson is that we should never judge an algorithm based on its complexity. Give it a shot, and make sure it is compared to the others in a fair setting.”

The method is available for use in cancer research on the role of DNA-RNA dynamics in the emergence of cancer.

Nakhleh is the William and Stephanie Sick Dean of Rice’s George R. Brown School of Engineering and a professor of computer science and biosciences.

The research was supported in part by the National Science Foundation (1812822, 2106837).

-30-

This release can be found online at news.rice.edu.

Follow Rice News and Media Relations via Twitter @RiceUNews.

Peer-reviewed paper:

“Accurate integration of single-cell DNA and RNA for analyzing intratumor heterogeneity using MaCroDNA” | Nature Communications | DOI: 10.1038/s41467-023-44014-3

Authors: Mohammadamin Edrisi, Xiru Huang, Huw Ogilvie and Luay Nakhleh

https://www.nature.com/articles/s41467-023-44014-3

Image downloads:

https://news-network.rice.edu/news/files/2024/02/240220_Divine9_Fitlow_002-faa340a92af98228.jpg
CAPTION: Mohammadamin Edrisi is a Rice University graduate student and lead author on a paper published in Nature Communications. (Photo by Jeff Fitlow/Rice University)

https://news-network.rice.edu/news/files/2024/02/240220_Divine9_Fitlow_019-27effdb32280b559.jpg
CAPTION: Mohammadamin Edrisi (left) and Xiru Huang (Photo by Jeff Fitlow/Rice University)

https://news-network.rice.edu/news/files/2024/02/240226_Luay_Fitlow_17529-f815f18803f7c7f4.jpg
CAPTION: Luay Nakhleh is the William and Stephanie Sick Dean of the George R. Brown School of Engineering and a professor of computer science and biosciences at Rice University. (Photo by Jeff Fitlow/Rice University)

Links:

George R. Brown School of Engineering: https://engineering.rice.edu/

Department of Computer Science: https://csweb.rice.edu/

Luay Nakhleh website: https://nakhleh.rice.edu/

About Rice:

Located on a 300-acre forested campus in Houston, Rice University is consistently ranked among the nation’s top 20 universities by U.S. News & World Report. Rice has highly respected schools of architecture, business, continuing studies, engineering, humanities, music, natural sciences and social sciences and is home to the Baker Institute for Public Policy. With 4,574 undergraduates and 3,982 graduate students, Rice’s undergraduate student-to-faculty ratio is just under 6-to-1. Its residential college system builds close-knit communities and lifelong friendships, just one reason why Rice is ranked No. 1 for lots of race/class interaction, No. 2 for best-run colleges and No. 12 for quality of life by the Princeton Review. Rice is also rated as a best value among private universities by Kiplinger’s Personal Finance.
 

If you do not wish to receive news releases from Rice University, reply to this email and write “unsubscribe” in the subject line. Office of News and Media Relations – MS 300, Rice University, 6100 Main St., Houston, TX 77005.


Disclaimer: AAAS and EurekAlert! are not responsible for the accuracy of news releases posted to EurekAlert! by contributing institutions or for the use of any information through the EurekAlert system.