Breast cancer is the most common cancer in women globally. Rising incidence and improvements in cancer care have contributed to a growing number of breast cancer survivors. As these cancer survivors live longer, and with almost 80% of them being older than 50 years of age, they are at higher risk of developing other chronic diseases and conditions like cardiovascular disease (CVD), weight gain, and osteoporosis.
The risk of chronic diseases is higher women with breast cancer than that of the general population, which is partly explained by treatment induced toxicity (eg. chemotherapy induced cardiotoxicity, radiation induced cardiotoxicity and lung fibrosis) and side effects (eg. hormone therapy induced osteoporosis, systemic therapy related weight gain), and partly by shared risk factors that predispose for breast cancer and other conditions like overweight and less physical exercise. Overall, development of chronic diseases after a breast cancer diagnosis has an unfavorable impact on quality of life and survival.
Most breast cancer patients (60-65%) are treated with radiotherapy. Planning computed tomography (CT)-images are obtained for delineation and computation of radiation dose distribution fields. These CT-images contain information on risk factors for other diseases like CVD (eg. calcifications in the epicardial coronary arteries and aorta) and early signs of osteoporosis. This potentially valuable but unrequested information is currently not systematically assessed nor reported by professionals, largely due to time constraints and unfamiliarity with its potential importance.
In the ARTILLERY project funded by Horizon Europe, we aim to develop, validate, and prospectively evaluate AI systems for automated early detection of chronic disease risk (factors) in women with breast cancer by using routine CT-images.
ARTILLERY COORDINATION AND MANAGEMENT
AI DEVELOPMENT AND VALIDATION
TRAINING AND VALIDATION OF AI SYSTEMS IN BREAST CANCER PATIENTS IN A REAL-WORLD DATA (RWD) REPOSITORY
CLINICAL IMPLEMENTATION AND EVALUATION OF AI SYSTEMS
ETHICAL AND LEGAL ASPECTS OF IMPLEMENTATION OF AI-SYSTEMS
DISSEMINATION, EXPLOITATION AND COMMUNICATION
Methods
A large data repository including routine CT scans of 26.000 women with breast cancer along with relevant patient variables and CVD outcomes will be set-up from multiple hospitals in Europe (i.e., University Medical Center (UMC) Utrecht, Amsterdam UMC, Region Hovedstaden, Champalimaud Foundation).
This repository will be used by computational scientists to develop and train AI systems for early detection of CVD risk. Using the same repository, methodologists will evaluate the validity of these AI systems.
In parallel, clinical practice guidelines for management of patients automatically identified by AI systems to be at increased risk of CVD will be created by a multidisciplinary team of (breast cancer) professionals for patients with increased risk of CVD and identified by AI systems.
In a multicenter prospective decision impact trial, the impact of implementation of the AI systems on patients’ risk profiles, health status and wellbeing will be evaluated. Finally, we will work towards the valorization of trustworthy AI-based software and product development with the aim to guarantee that ethical principles of trustworthy AI-systems in regular breast cancer patients care will be met.