基于机器学习模型的多类轻量级脑肿瘤分类与检测

A. Raza, Usman Amjad, Muhammad Abubakr, Dr.Asad Abbasi, Humera Azam, Asher Ali
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引用次数: 0

摘要

早期脑肿瘤的识别是神经学家和放射科医生面临的一个关键挑战。通过磁共振成像(MRI)人工识别脑肿瘤是困难的,而且容易出错。传统的肿瘤诊断方法是一项复杂的工作。大脑异常可能是致命的,会降低患者的生活质量,并对他们的整体健康产生不利影响。脑肿瘤在本质上是不同的,这取决于它们所处的位置和它们在颅骨内发展的速度。肿瘤是异常神经细胞增生形成肿块。一些脑瘤起源于支持大脑神经细胞的细胞。本文提出了一种名为YOLO v5 SSD (single shot detection)的机器学习算法,对脑膜瘤、胶质瘤、脑垂体等肿瘤进行检测和分类,准确率为88%。为此,数据增强应用于来自Kaggle的公共可用数据集。不同类型的MRI图像,其中胶质瘤396张,脑膜瘤397张,无肿瘤380张,垂体瘤399张。本研究提出假阴性、真阳性、假阳性和真阴性,用于测试YOLO v5 (You Only Look Once)分类器的性能。确定YOLO v5模型的准确率为88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiclass Light Weight Brain Tumor Classification and Detection using Machine Learning Model Yolo 5
Early brain tumor identification is a critical challenge for neurologists and radiologists. Manually identifying brain tumors through magnetic resonance imaging (MRI) is difficult and prone to mistakes. The diagnosis of tumor is a complex job when performed in a traditional manner. Brain abnormalities can be fatal, lowering a patient's quality of life and adversely harming their overall health. Brain tumors vary in nature based on where they are situated and how rapidly they develop inside the skull. Tumors are a proliferation of abnormal nerve cells that form a mass. Some brain tumors begin in the cells that support the brain's nerve cells. This paper proposes a machine learning algorithm known as YOLO v5 SSD (single shot detection) to detect and classify such tumors namely meningioma, glioma, and pituitary gland with 88% accuracy. For this purpose, data augmentation was applied to the publically available dataset from Kaggle. MRI of different classes including 396 glioma images, 397 meningioma, 380 no tumor, and 399 images of pituitary tumors were employed. The current study presents false negative, true positive false positive, and true negative, which were used to test the YOLO v5 (You Only Look Once) classifier performance. It was determined that the YOLO v5 model is giving 88% accuracy.
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