Abstract 1234P
Background
Recently, the field of digital pathology has seen an increase in research utilizing deep learning techniques. This allows for predictions such as cancer diagnosis, prognosis, and treatment response, which previously required additional analysis, such as genetic analysis that was both time-consuming and costly, to be made based on pathological imaging. However, digital pathology images often contain noise, such as inconsistent staining and inconsistent annotations. To address this issue, image preprocessing is essential in deep learning analysis of digital pathology images, and various preprocessing techniques have been proposed to address issues such as bias, overfitting, and robust deep learning model development. However, automated preprocessing methods for digital pathology images have not yet been fully developed.
Methods
To address this, we have developed a user-friendly tool for image preprocessing analysis called HistoMate.
Results
HistoMate provides GUI-based image segmentation, image tiling, color normalization, and deep learning-based data augmentation to automate the preprocessing process. It also provides functionality to evaluate image quality and select appropriate patches.
Conclusions
In conclusion, HistoMate provides an automated preprocessing tool for pathological image-based research, accelerating digital pathology-based research.
Clinical trial identification
Editorial acknowledgement
This work was supported by the National Research Foundation of Korea (NRF) grant funded by the Korean Government (MSIT) (grant no. NRF-2021R1C1C1013706), and research fund by Seoul National University Bundang Hospital (grant no. 14-2018-0013).
Legal entity responsible for the study
The authors.
Funding
This work was supported by the National Research Foundation of Korea (NRF) grant funded by the Korean Government (MSIT) (grant no. NRF-2021R1C1C1013706), and research fund by Seoul National University Bundang Hospital (grant no. 14-2018-0013).
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
1203P - Role of tumor markers before or during chemotherapy for poorly differentiated neuroendocrine carcinomas of the digestive system: An exploratory analysis of JCOG1213
Presenter: Tomoyuki Satake
Session: Poster session 14
1204TiP - Iadademstat in combination with paclitaxel in relapsed/refractory small cell lung carcinoma (SCLC) and extrapulmonary high grade neuroendocrine carcinoma (NEC)
Presenter: Neel Belani
Session: Poster session 14
1212P - Predictive value of a near-term prediction model for severe irAEs in cancer treatment with ICIs
Presenter: Jun Zhao
Session: Poster session 14
1213P - HRD complete: A novel NGS assay for detecting homologous recombination repair (HRR) gene alterations in prostate cancer
Presenter: Xin Ye
Session: Poster session 14
1214P - A novel machine learning based method to detect homozygous deletion of homologous recombination repair (HRR) genes in prostate cancer
Presenter: Jianqing Wang
Session: Poster session 14
1215P - Comparative analysis of cfDNA liquid biopsy and tumor-based next-generation sequencing (NGS) approaches
Presenter: Anastasiya Yudina
Session: Poster session 14
1216P - A spectroscopic liquid biopsy for the earlier detection of multiple cancer types
Presenter: Matthew Baker
Session: Poster session 14
1217P - Clinical evaluation of a CE-IVD liquid biopsy pan cancer genomic profiling test
Presenter: Timothy Crook
Session: Poster session 14
1218P - Exploring cancer care pathways in seven European countries: Identifying obstacles and opportunities for the role of artificial intelligence
Presenter: Shereen Nabhani
Session: Poster session 14