Unmasking Ovary Tumors: Real-Time Detection with YOLOv5
Nishat Vasker, Ab. Rahim Ahmed Sowrov, Mahamudul Hasan, Md Sawkat Ali, Mohammad Rifat Ahmmad Rashid, Mohammad Manzurul Islam
- 发表年份
- 2023
- 引用次数
- 5
摘要
Ovary tumor is an unexpected growth of a women’s ovary. For successful treatment planning and identification, ovary tumor detection is critical. The present medical method to detect ovary tumors is dependent on ultrasonic imaging, which can be constrained by its high cost, time-intensive nature, and dependence on specialized equipment and proficient personnel. With and advanced object detection algorithm Our system proposes a approach for the real-time diagnosis of ovarian tumors by utilizing YOLOv5. The proposed methodology obviates the need for ultrasound imaging by leveraging a machine learning model trained on a dataset comprising images of both healthy and malignant ovaries. Our system is able to precisely identify ovarian tumors through the analysis of real-time photos or video, using it as an alternative to ultrasound imaging. Our system can be easily used in a variety of medical applications. Consistent with the contemporary practice of remote patient care, our state-of-the-art technology for detecting ovarian tumors in real-time enables medical practitioners to diagnose such tumors from a distance, thereby facilitating prompt intervention and treatment. In addition, the integration of our approach into the increasing prevalence of robotic-assisted surgery may facilitate the autonomous detection of ovarian tumors during surgical procedures, thereby improving surgical accuracy and patient outcomes. In addition, the proposed methodology offers a cost-effective means of identifying ovarian neoplasms, particularly advantageous for socioeconomically disadvantaged populations that encounter challenges in obtaining costly ultrasound apparatus and remote medical evaluations. Our approach decreases patients’ financial burden by removing the need for costly ultrasound scans and permitting remote medical consultations. Our study proposes a unique approach for detecting ovarian tumors in real time using YOLOv5. The system’s capacity to detect ovarian tumor using real-time photos or video, as well as its application in remote medical settings and cost, making it a promising diagnostic tool for ovarian tumors. This study paves the path for better ovarian tumor identification, accessibility, and treatment results.
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