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Tim Rattay MBChB PhD: Artificial Intelligence Tool Minimizes Arm Lymphedema After Breast Cancer Surgery and Radiotherapy

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Manage episode 505545957 series 1256601
Content provided by Audio Medica News. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Audio Medica News or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

An interview with:

Tim Rattay MBChB PhD, Consultant Breast Surgeon, University Hospitals of Leicester, Associate Professor in Breast Surgery, Leicester Cancer Research Centre, University of Leicester, England, UK. A report from the 14th European Breast Cancer Conference, Milan, Italy

MILAN, Italy—An artificial intelligence tool can predict the risk of lymphedema in a particular patient after breast cancer radiotherapy, according to research findings from Leicester University in the United Kingdom.

The 2024 European Breast Cancer Conference in Milan heard how AI can help cancer doctors to individualize radiotherapy regimens after surgery so as to minimize toxicity.

Tim Rattay MBChB PhD, Associate Professor in Breast Surgery at the Leicester Cancer Research Centre, University of Leicester and Consultant Breast Surgeon at the University Hospitals of Leicester in the UK, told the conference about his group’s machine-learning algorithm: PRE-ACT (Prediction of Radiotherapy side Effects using explainable AI for patient Communication and Treatment modification) that predicts post-operative lymphedema.

After reporting his research in Milan, he gave Peter Goodwin the details.

Tim Rattay MBChB PhD: IN: (GOODWIN) “Artificial intelligence …….OUT: ….. For the Audio Journal Oncology, I’m Peter Goodwin” 14:05 secs

EBCC Abstract no: 23:

“Development of an explainable AI prediction model for arm lymphoedema following breast cancer surgery and radiotherapy”,

https://cm.eortc.org/cmPortal/Searchable/ebcc14/config/Normal/#!sessiondetails/0000108900_0

MORE:

AI tool for breast cancer patients following surgery

An international team of researchers, led by the University of Leicester, has developed an artificial intelligence (AI) tool that can predict which breast cancer patients may be at risk of side effects after surgery and radiotherapy.

Dr Tim Rattay, a consultant breast surgeon and Associate Professor at the University’s Leicester Cancer Research Centre, presented the development at the 14th European Breast Cancer Conference (EBCC14) in Milan this week (21 March), explaining that the tool will be tested in a clinical trial towards the end of the year in the UK, France, and Netherlands.

Some of the factors that increase the risk of side effects are already known, but the PRE-ACT project (Prediction of Radiotherapy side Effects using explainable AI for patient Communication and Treatment modification) aims to make more accurate predictions for each individual patient, as well as providing easily understandable explanations for doctors and patients.

Dr Rattay said: “The explainable AI tool shows the reasoning behind its decision-making so it’s easier not only for doctors to make decisions, but also to provide data-backed explanations to their patients.

“Thankfully, long-term survival rates from breast cancer continue to increase, but for some patients, this means having to live with the side effects of their treatment, including skin changes, scarring, lymphoedema, which is a painful swelling of the arm, and even heart damage from radiation treatment.

“That’s why we’ve developed an AI tool to inform doctors and patients about the risk of chronic arm swelling after surgery and radiotherapy for breast cancer. We hope this will assist doctors and patients in choosing options for radiation treatment and reduce side effects for all patients.”

The team of researchers used information from European datasets (REQUITE, Hypo-G and CANTO) on 6,361 breast cancer patients to train different machine learning algorithms to predict arm swelling up to three years after surgery and radiotherapy.

The AI tool correctly predicted lymphoedema in an average of 81.6% of cases and correctly identified patients who would not develop it in an average of 72.9% of cases. The overall predictive accuracy of the model was 73.4%.

Dr Rattay said: “Patients identified at higher risk of arm swelling could be offered additional supportive measures, such as wearing an arm compression sleeve during treatment, which has been shown to reduce arm swelling in the long-term. Clinicians may also use this information to discuss options for lymph node irradiation in patients, where its benefit may be fairly borderline. We will test the effect of the prediction model on clinician and patient behaviour and use of the prophylactic arm sleeve in the proposed clinical trial.”

The researchers will incorporate the current AI model into software that can provide evaluations and predictions to doctors and patients. This will be tested when the PRE-ACT-clinical trial starts later this year. They are also developing the tool further so that it can predict other side effects, such as skin and heart damage.

Dr Guido Bologna, Associate Professor at the University of Applied Sciences and Arts of Western Switzerland in Geneva, and co-investigator on the project added: “The final, best-performing model makes predictions using 32 different patient and treatment features, including whether or not patients had chemotherapy, whether sentinel lymph node biopsy under the armpit was carried out, and the type of radiotherapy given.”

As part of the trial, the researchers will collect data on genetic markers and imaging data to improve the accuracy of the AI tools, although these will not be used to make predictions in the PRE-ACT trial.

The study is funded by the Horizon Europe programme and it is hoped that approximately 780 patients will take part in the clinical trial by early 2026, with a follow up period of two years.

  continue reading

51 episodes

Artwork
iconShare
 
Manage episode 505545957 series 1256601
Content provided by Audio Medica News. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Audio Medica News or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

An interview with:

Tim Rattay MBChB PhD, Consultant Breast Surgeon, University Hospitals of Leicester, Associate Professor in Breast Surgery, Leicester Cancer Research Centre, University of Leicester, England, UK. A report from the 14th European Breast Cancer Conference, Milan, Italy

MILAN, Italy—An artificial intelligence tool can predict the risk of lymphedema in a particular patient after breast cancer radiotherapy, according to research findings from Leicester University in the United Kingdom.

The 2024 European Breast Cancer Conference in Milan heard how AI can help cancer doctors to individualize radiotherapy regimens after surgery so as to minimize toxicity.

Tim Rattay MBChB PhD, Associate Professor in Breast Surgery at the Leicester Cancer Research Centre, University of Leicester and Consultant Breast Surgeon at the University Hospitals of Leicester in the UK, told the conference about his group’s machine-learning algorithm: PRE-ACT (Prediction of Radiotherapy side Effects using explainable AI for patient Communication and Treatment modification) that predicts post-operative lymphedema.

After reporting his research in Milan, he gave Peter Goodwin the details.

Tim Rattay MBChB PhD: IN: (GOODWIN) “Artificial intelligence …….OUT: ….. For the Audio Journal Oncology, I’m Peter Goodwin” 14:05 secs

EBCC Abstract no: 23:

“Development of an explainable AI prediction model for arm lymphoedema following breast cancer surgery and radiotherapy”,

https://cm.eortc.org/cmPortal/Searchable/ebcc14/config/Normal/#!sessiondetails/0000108900_0

MORE:

AI tool for breast cancer patients following surgery

An international team of researchers, led by the University of Leicester, has developed an artificial intelligence (AI) tool that can predict which breast cancer patients may be at risk of side effects after surgery and radiotherapy.

Dr Tim Rattay, a consultant breast surgeon and Associate Professor at the University’s Leicester Cancer Research Centre, presented the development at the 14th European Breast Cancer Conference (EBCC14) in Milan this week (21 March), explaining that the tool will be tested in a clinical trial towards the end of the year in the UK, France, and Netherlands.

Some of the factors that increase the risk of side effects are already known, but the PRE-ACT project (Prediction of Radiotherapy side Effects using explainable AI for patient Communication and Treatment modification) aims to make more accurate predictions for each individual patient, as well as providing easily understandable explanations for doctors and patients.

Dr Rattay said: “The explainable AI tool shows the reasoning behind its decision-making so it’s easier not only for doctors to make decisions, but also to provide data-backed explanations to their patients.

“Thankfully, long-term survival rates from breast cancer continue to increase, but for some patients, this means having to live with the side effects of their treatment, including skin changes, scarring, lymphoedema, which is a painful swelling of the arm, and even heart damage from radiation treatment.

“That’s why we’ve developed an AI tool to inform doctors and patients about the risk of chronic arm swelling after surgery and radiotherapy for breast cancer. We hope this will assist doctors and patients in choosing options for radiation treatment and reduce side effects for all patients.”

The team of researchers used information from European datasets (REQUITE, Hypo-G and CANTO) on 6,361 breast cancer patients to train different machine learning algorithms to predict arm swelling up to three years after surgery and radiotherapy.

The AI tool correctly predicted lymphoedema in an average of 81.6% of cases and correctly identified patients who would not develop it in an average of 72.9% of cases. The overall predictive accuracy of the model was 73.4%.

Dr Rattay said: “Patients identified at higher risk of arm swelling could be offered additional supportive measures, such as wearing an arm compression sleeve during treatment, which has been shown to reduce arm swelling in the long-term. Clinicians may also use this information to discuss options for lymph node irradiation in patients, where its benefit may be fairly borderline. We will test the effect of the prediction model on clinician and patient behaviour and use of the prophylactic arm sleeve in the proposed clinical trial.”

The researchers will incorporate the current AI model into software that can provide evaluations and predictions to doctors and patients. This will be tested when the PRE-ACT-clinical trial starts later this year. They are also developing the tool further so that it can predict other side effects, such as skin and heart damage.

Dr Guido Bologna, Associate Professor at the University of Applied Sciences and Arts of Western Switzerland in Geneva, and co-investigator on the project added: “The final, best-performing model makes predictions using 32 different patient and treatment features, including whether or not patients had chemotherapy, whether sentinel lymph node biopsy under the armpit was carried out, and the type of radiotherapy given.”

As part of the trial, the researchers will collect data on genetic markers and imaging data to improve the accuracy of the AI tools, although these will not be used to make predictions in the PRE-ACT trial.

The study is funded by the Horizon Europe programme and it is hoped that approximately 780 patients will take part in the clinical trial by early 2026, with a follow up period of two years.

  continue reading

51 episodes

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