Ample evidence has highlighted the significant clinical benefit of novel therapies for many patients with advanced breast cancer (aBC). The use of CDK inhibitors, antibody-drug conjugates (ADCs), immune checkpoint inhibitors (ICIs), and PARP inhibitors as first-line or subsequent treatments has improved progression-free survival (PFS) rates compared to conventional therapies. In selected cases, these treatments have also increased overall survival (OS), reshaping the therapeutic landscape for advanced breast cancer. However, several key questions remain unanswered. For example, what should be the first-line treatment when multiple effective options are available? Determining the optimal sequence of drugs in successive lines of therapy is another major challenge. Furthermore, the development of resistance to treatment and the occurrence of severe adverse events that may lead to early discontinuation or fatal outcomes are pressing concerns. That said, identifying robust predictive biomarkers of response or resistance is crucial for ensuring that patients receive the most effective treatment while avoiding unnecessary exposure to therapies that could cause harm without benefit. Additionally, when multiple effective options exist, selecting the optimal treatment algorithm for each patient based on clinical, pathological, and molecular biomarkers is essential. We herein, aim at employing high throughput methodologies, such as Whole Exome Sequencing, circulating tumour DNA (ctDNA) analysis, digital pathology and radiomics analyses, as well as real-world data obtained both from patients records for the training of a ML-based algorithm that can predict response or resistance to a specific treatment, based on the genetic make-up of the patient and the molecular profile of the tumour.
Study Type
OBSERVATIONAL
Enrollment
150
University General Hospital "ATTIKON", 2nd propedeutic dept. of Internal Medicine
Athens, Greece
RECRUITING"MITERA" Hospital, Dept. of Medical Oncology
Athens, Greece
RECRUITINGMetropolitan Hospital, 2nd Dept. of Medical Oncology
Athens, Greece
RECRUITINGMetropolitan Hospital, 4th Dept. of Medical Oncology
Athens, Greece
RECRUITINGSt. Luke's Hospital, Dept. of Medical Oncology
Thessaloniki, Greece
RECRUITINGProgression-free survival (PFS)
Correlation of genetic and molecular/circulating biomarkers with PFS, with PFS defined as the time from enrollment to disease progression or death
Time frame: Through study completion, 5 years
Overall Survival (OS)
Correlation of genetic and molecular/circulating biomarkers with OS, with OS defined as the time from date of metastatic diagnosis to last follow-up (36 months, post enrollment) or death
Time frame: Through study completion, 5 years
Objective Response Rate (ORR)
Correlation of genetic and molecular biomarkers with response to treatment
Time frame: Through study completion, 5 years
Evaluation of AI-predictive algorithm
Evaluation of the efficiency of the AI-predictive algorithm, by determining key metrics such as sensitivity and specificity
Time frame: Through study completion, 5 years
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