LabMedica

Download Mobile App
Recent News Expo Clinical Chem. Molecular Diagnostics Hematology Immunology Microbiology Pathology Technology Industry Focus

An Omics Approach for Predicting Mutations in Protein-Metal Binding Sites

By LabMedica International staff writers
Posted on 06 Jan 2020
Print article
Image: Cartoon representation of the zinc-finger motif of proteins. The zinc ion (green) is coordinated by two histidine and two cysteine amino acid residues (Photo courtesy of Wikimedia Commons)
Image: Cartoon representation of the zinc-finger motif of proteins. The zinc ion (green) is coordinated by two histidine and two cysteine amino acid residues (Photo courtesy of Wikimedia Commons)
A deep learning approach was developed that was able to predict how mutations in the metal-binding sites of metalloproteins were related to various diseases.

Metalloproteins play important roles in many biological processes. Mutations at the metal-binding sites may functionally disrupt metalloproteins, initiating severe diseases; however, there has not been an effective approach for predicting such mutations.

In this regard, investigators at the University of Hong Kong (China) developed an “omics”-based deep learning approach to predict disease-associated mutations of the metal-binding sites in a protein. Omics (such fields as genomics, proteomics, etc.) aims at the collective characterization and quantification of pools of biological molecules that translate into the structure, function, and dynamics of an organism or organisms.

The investigators began by integrating omics data from different databases to build a comprehensive computer training dataset. Statistical analysis of the collected data revealed that various metals had different disease associations. A mutation in zinc-binding sites had a major role in breast, liver, kidney, immune system, and prostate diseases. By contrast, mutations in calcium- and magnesium-binding sites were associated with muscular and immune system diseases, respectively. Mutations in iron-binding sites were associated with metabolic diseases. In addition, mutations of manganese- and copper-binding sites were associated with cardiovascular diseases, and copper-binding site mutations were also associated with nervous system diseases.

The investigators generated energy-based affinity grid maps and physiochemical features of the metal-binding pockets (obtained from different databases as spatial and sequential features) and subsequently incorporated these features into a multichannel convolutional neural network. After training the model, the multichannel convolutional neural network successfully predicted disease-associated mutations that occurred at the first and second coordination spheres of zinc-binding sites with an area under the curve of 0.90 and an accuracy of 0.82.

Senior author Dr. Hongzhe Sun, professor of bioinorganic chemistry at the University of Honk Kong, said, "Machine learning and AI play important roles in the current biological and chemical science. In my group we worked on metals in biology and medicine using integrative omics approach including metallomics and metalloproteomics, and we already produced a large amount of valuable data using in vivo/vitro experiments. We now develop an artificial intelligence approach based on deep learning to turn these raw data to valuable knowledge, leading to uncover secrets behind the diseases and to fight with them. I believe this novel deep learning approach can be used in other projects, which is undergoing in our laboratory."

The mettaloprotein binding site mutations paper was published in the December 9, 2019, online edition of the journal Nature Machine Intelligence.

Related Links:
University of Hong Kong

Platinum Member
COVID-19 Rapid Test
OSOM COVID-19 Antigen Rapid Test
Magnetic Bead Separation Modules
MAG and HEATMAG
Complement 3 (C3) Test
GPP-100 C3 Kit
New
Gold Member
TORCH Panel Rapid Test
Rapid TORCH Panel Test

Print article

Channels

Clinical Chemistry

view channel
Image: The 3D printed miniature ionizer is a key component of a mass spectrometer (Photo courtesy of MIT)

3D Printed Point-Of-Care Mass Spectrometer Outperforms State-Of-The-Art Models

Mass spectrometry is a precise technique for identifying the chemical components of a sample and has significant potential for monitoring chronic illness health states, such as measuring hormone levels... Read more

Hematology

view channel
Image: The CAPILLARYS 3 DBS devices have received U.S. FDA 510(k) clearance (Photo courtesy of Sebia)

Next Generation Instrument Screens for Hemoglobin Disorders in Newborns

Hemoglobinopathies, the most widespread inherited conditions globally, affect about 7% of the population as carriers, with 2.7% of newborns being born with these conditions. The spectrum of clinical manifestations... Read more

Immunology

view channel
Image: The AI predictive model identifies the most potent cancer killing immune cells for use in immunotherapies (Photo courtesy of Shutterstock)

AI Predicts Tumor-Killing Cells with High Accuracy

Cellular immunotherapy involves extracting immune cells from a patient's tumor, potentially enhancing their cancer-fighting capabilities through engineering, and then expanding and reintroducing them into the body.... Read more

Microbiology

view channel
Image: The T-SPOT.TB test is now paired with the Auto-Pure 2400 liquid handling platform for accurate TB testing (Photo courtesy of Shutterstock)

Integrated Solution Ushers New Era of Automated Tuberculosis Testing

Tuberculosis (TB) is responsible for 1.3 million deaths every year, positioning it as one of the top killers globally due to a single infectious agent. In 2022, around 10.6 million people were diagnosed... Read more