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Clinical Trials/NCT04695015
NCT04695015
Unknown
Not Applicable

Research of Pathological Imaging Diagnosis of Ocular Tumors Based on New Artificial Intelligence Algorithm

Peking University0 sites100 target enrollmentDecember 31, 2020

Overview

Phase
Not Applicable
Intervention
Not specified
Conditions
Melanoma (Skin)
Sponsor
Peking University
Enrollment
100
Primary Endpoint
To compare the diagnostic accuracy of OPAL and IHC for melanoma and other tumors.
Last Updated
5 years ago

Overview

Brief Summary

The purpose of this study is to establish a standardized process for obtaining digital pathological image information of ocular tumors; use modern pathological techniques to obtain the co-expression information of multiple biomarkers in the pathological tissues of ocular tumors, and finally construct standardized digital ocular tumors with biomarkers Pathology image database.

Detailed Description

This study is a prospective study. Patients with common and representative ocular tumors in the Department of Ophthalmology, Peking University Third Hospital, will be selected and enrolled after informed consent to collect basic clinical information, preoperative blood samples, and ocular tumors Obtain pathological image annotation data and genomics-related data from ocular tumor tissue specimens, use blood samples for genomics information analysis, provide multi-dimensional data for the development of artificial intelligence algorithms, and establish artificial intelligence-assisted image data for eye tumors Standardize the process and establish a multi-modal ocular tumor standardized database of "clinical information-tissue samples-pathological images-genomics data". The database and the diagnosis system are correlated with each other to provide optimal image data for later machine learning and related algorithm establishment, and finally the investigators will be completed the design of a new artificial intelligence-assisted diagnosis system for eye tumors.

Registry
clinicaltrials.gov
Start Date
December 31, 2020
End Date
June 1, 2022
Last Updated
5 years ago
Study Type
Observational
Sex
All

Investigators

Sponsor
Peking University
Responsible Party
Principal Investigator
Principal Investigator

Chun Zhang

professor

Peking University

Eligibility Criteria

Inclusion Criteria

  • Patients diagnosed with eye tumors and undergoing eye tumor surgery.
  • Patients sign informed consent for sample collection and sample transfer agreement, and can cooperate with long-term regular follow-up requirements.

Exclusion Criteria

  • Patients who are unable to undergo tumor surgery or retain samples due to various reasons .
  • Patients who are positive for hepatitis B, HIV, and syphilis.
  • Patient compliance is poor.

Outcomes

Primary Outcomes

To compare the diagnostic accuracy of OPAL and IHC for melanoma and other tumors.

Time Frame: Up to 24 weeks.

The result of OPAL automatic analysis will be compared with IHC manual counting analysis.The accuracy of the study will be declared "success" if OPAL automatic analysis meet more than 85% of the manual count for all antibody.

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