Abstract

The research was aimed at analyzing current approaches to the organization and design methodology of visualization database built on the basis of computer vision . Such approaches are necessary for effective development of diagnostic systems using artificial intelligence (AI). A training data set of high quality is a mandatory prerequisite for that . Material and methods . The paper presents the technology for designing an annotated database (SBT Dataset ) that contains about 1000 clinical cases based on the archived data acquired by the Federal Neurosurgical Center, Novosibirsk , Russia including data on patients with astrocytoma , glioblastoma , meningioma , neurinoma , and patients with metastases of somatic tumors . Each case is represented by a preoperative MRI. The Results and discussion . The dataset was built (SBT Dataset ) containing segmented 3D MRI images of 5 types of brain tumors with 991 verified observations . Each case is represented by four MRI sequences T1-WI, T1C ( with Gd-contrast ), T2-WI and T2-FLAIR with histological and histochemical postoperative confirmation . Tumors segmentation with verification of the tumor core elements boundaries and perifocal edema was approved by two certified experienced neuroradiologists . Conclusion . The database built during the research is comparable in its volume and quality ( verification level ) with the state-of-the-art databases . The methodological approaches proposed in this paper were focused on designing the high-quality medical computer vision systems . The database was used to create artificial intelligence systems with the “ physician assistant ” functions for preoperative MRI diagnostics in neurosurgery.

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