Abstract 336P
Background
For surgically resected breast cancer samples, it is challenging to perform specimen sampling by visual inspection, especially when the tumor bed shrinks after neoadjuvant therapy in breast cancer.
Methods
We developed a dual-mode near-infrared multispectral imaging system (DNMIS) to obtain richer sample tissue information by acquiring reflection and transmission images covering visible to NIR-II spectrum range (400–1700 nm). Additionally, artificial intelligence (AI) was used to segment the rich multispectral data. 80 breast cancer samples were collected to verify the advantage of DNMIS in assisting pathologists to identify tumor beds.
Results
DNMIS demonstrated better tissue contrast and eliminated the interference of surgical inks on the breast tissue surface, helping pathologists find the tumor area which is easy to be overlooked with visual inspection. Statistically, AI-powered DNMIS provided a higher tumor sensitivity (95.9% vs visual inspection 88.4% and X-rays 92.8%), especially for breast samples after neoadjuvant therapy (90.3% vs visual inspection 68.6% and X-rays 81.8%).
Conclusions
We infer that DNMIS can improve the breast tumor specimen sampling work by helping pathologists avoid missing out tumor foci.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Has not received any funding.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
303P - Differential prognostic role of PDGFRA alterations in breast cancer subtypes
Presenter: Panagiotis Vlachostergios
Session: Poster session 02
304P - Generalizability of 313-SNP PRS for breast cancer risk in non-European ancestries
Presenter: Helen Shang
Session: Poster session 02
305P - Prognostic implications of HER2 changes after neoadjuvant chemotherapy in patients with HER2-zero and HER2-low breast cancer
Presenter: Sora Kang
Session: Poster session 02
307P - Identifying new biological subgroups of triple-negative breast cancer using next-generation integrative clustering pipeline
Presenter: Xixuan Zhu
Session: Poster session 02
308P - Regression-based deep-learning predicts breast cancer recurrence risk score from pathology slides
Presenter: Omar El Nahhas
Session: Poster session 02
310P - Longitudinal evaluation of circulating tumour DNA in early breast cancer using a plasma-only methylation-based assay
Presenter: Mitchell Elliott
Session: Poster session 02
311P - Multinational survey study assessing genetic testing and counselling among patients (pts) with breast cancer (MAGENTA): Results on the genetic counselling experience
Presenter: Ranjit Kaur
Session: Poster session 02
312P - Prediction model of breast cancer patient’s neoadjuvant treatment outcome using breast cancer organoids cultured from core needle biopsies
Presenter: Dong Woo Lee
Session: Poster session 02