Investigator

Sepideh Hatamikia

Assistant professor, Head of Computational Imaging, Medical Image Analysis & Artificial Intelligence (MIAAI) group · Danube Private University

About

SHSepideh Hatamikia
Papers(1)
Ovarian cancer beyond…
Institutions(1)
Danube Private Univer…

Papers

Ovarian cancer beyond imaging: integration of AI and multiomics biomarkers

AbstractHigh-grade serous ovarian cancer is the most lethal gynaecological malignancy. Detailed molecular studies have revealed marked intra-patient heterogeneity at the tumour microenvironment level, likely contributing to poor prognosis. Despite large quantities of clinical, molecular and imaging data on ovarian cancer being accumulated worldwide and the rise of high-throughput computing, data frequently remain siloed and are thus inaccessible for integrated analyses. Only a minority of studies on ovarian cancer have set out to harness artificial intelligence (AI) for the integration of multiomics data and for developing powerful algorithms that capture the characteristics of ovarian cancer at multiple scales and levels. Clinical data, serum markers, and imaging data were most frequently used, followed by genomics and transcriptomics. The current literature proves that integrative multiomics approaches outperform models based on single data types and indicates that imaging can be used for the longitudinal tracking of tumour heterogeneity in space and potentially over time. This review presents an overview of studies that integrated two or more data types to develop AI-based classifiers or prediction models.Relevance statement Integrative multiomics models for ovarian cancer outperform models using single data types for classification, prognostication, and predictive tasks.Key points• This review presents studies using multiomics and artificial intelligence in ovarian cancer.• Current literature proves that integrative multiomics outperform models using single data types.• Around 60% of studies used a combination of imaging with clinical data.• The combination of genomics and transcriptomics with imaging data was infrequently used. Graphical Abstract

43Works
1Papers
Ovarian NeoplasmsTumor Microenvironment

Positions

2022–

Assistant professor, Head of Computational Imaging, Medical Image Analysis & Artificial Intelligence (MIAAI) group

Danube Private University

2022–

Researcher part time

Austrian Center for Medical Innovation and Technology

2021–

Postdoctoral researcher, part time

Medical University of Vienna · Medical Physics and Biomedical Engineering, Digital Image Processing Laboratory

2018–

Researcher full time

Austrian Center for Medical Innovation and Technology

Education

PhD

Medical University of Vienna · Medical Physics and Biomedical Engineering, Digital Image Processing Laboratory

Postdoctoral researcher

Medical University of Vienna · Medical Physics and Biomedical Engineering, Digital Image Processing Laboratory

Country

AT

Keywords
Medical Image ProcessingImage ReconstructionImage RegsitrationMedical Image AnalysisArtificial IntelligenceMachine LearningDeep Learning3D printing Imaging phantoms