Scientists develop a new AI breast cancer diagnostic tool

Date:

Scientists are developing a new way to identify the unique chemical ‘fingerprints’ for different types of breast cancers.

Scientists are developing a new way to identify the unique chemical ‘fingerprints’ for different types of breast cancers. These new chemical footprints will be used to train AI (artificial intelligence) software – creating a new tool for rapid and accurate diagnosis of breast cancer.

The team of researcher from Lancaster University and Airedale NHS Foundation Trust are using a specialised chemical analytical technique called Raman Spectroscopy on biopsies to identify the molecular structure of different types of breast cancer, as well as variations within each cancer cell group. The results of the study were publlished in the journal Expert Review of Molecular Diagnostics.

Raman analysis is able to provide real-time information on cells and can be used to check how the cells are behaving, spreading and emerging elsewhere in the body.

After identifying the chemical fingerprints of breast cancer cells, and observing how they change, the researchers used this information to train complex machine learning algorithms to identify four subtypes of cancer.

The algorithms successfully predicted diagnostic patterns for each subtype with a high level of accuracy ranging between 70 per cent and 100 per cent.

Similar versions of these algorithms have previously been used to identify other forms of caners and diseases such as skin, oral and lung cancers.

The next stage of the research will look at creating databases of the chemical structures of many more different types of breast cancer cells and the forms they can take.

These databases will be then used to train more artificial intelligent algorithms using machine learning – eventually leading to a new diagnostic tool to sit alongside mammograms and MRI scans.

The new algorithms promise to provide rapid information to help medical specialists to make quicker diagnosis.

In addition, the approach will help to determine the state of the disease at various points in its progression and will become critical in planning the therapeutic approach of individual patients.

Professor Ihtesham Rehman, Chair in Bioengineering at Lancaster University and senior author of the study, said: “This research is an important step in developing a new way to identify the chemical structures of different types of breast cancers. We have been able to use these ‘fingerprints’ to develop complex algorithms that are accurately able to identify cells of four different types of cancer types.

“Vibrational spectroscopy combined with data mining and machine learning has the potential to offer a real-time analysis in biological samples, including cancer, with excellent accuracy – creating a powerful new tool to sit alongside existing techniques and helping medical specialists deliver accurate and timely diagnosis for their patients, and for monitoring the progression of the disease.”

Share post:

Subscribe

spot_imgspot_img

Popular

More like this
Related

Check out the Dubai Job search package for 2024

One of India's largest travel and tour operators to...

Airlines operating in Israel despite the war in Gaza

The number of airlines flying into the country has...

Al Hefaiyah : New lake opens in Sharjah with mountain views

Spread over 12 sq km in the Khor Kalba...