Identifikasi Tumor Otak Citra MRI dengan Convolutional Neural Network

Nur Nafiiyah
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Abstract

The science of artificial intelligence and computer vision is beneficial in facilitating the detection of diseases in the medical field. Computer-based disease detection can save time. However, identifying and detecting tumors on MRI images require seriousness and is time-consuming. Due to the diversity of structures in size, shape, and intensity of the image, accuracy is needed in identifying the original organ structure and the diseased one. Previous studies have proposed a method for identifying brain tumors to produce the correct precision. In previous studies, neural network-based methods have good accuracy. We present five Convolutional Neural Network (CNN) architectures for identifying brain tumors (glioma, meningioma, no tumor, and pituitary) on MRI images. This study aims to develop an optimal CNN architecture for identifying tumors. We use the dataset from Kaggle with a total training data of 5712 and testing of 1311. Of the five proposed CNN architectures, architecture c has the highest accuracy of 82.2% with an unlimited number of parameters of 29605060. A good CNN architecture has many convolution layers. We also compare the proposed architecture with CNN transfer learning (Inception, ResNet-50, and VGG16), and with CNN transfer learning architecture, the accuracy is higher than our proposed architecture.
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通过卷积神经网络识别 Citra MRI 肿瘤
人工智能和计算机视觉科学有助于促进医学领域的疾病检测。基于计算机的疾病检测可以节省时间。然而,在核磁共振成像图像上识别和检测肿瘤需要严肃认真的态度和耗费大量时间。由于图像结构在大小、形状和强度上的多样性,需要准确识别原始器官结构和病变结构。以往的研究提出了一种识别脑肿瘤的方法,以达到正确的精度。在以往的研究中,基于神经网络的方法具有良好的准确性。我们提出了五种卷积神经网络(CNN)架构,用于识别 MRI 图像上的脑肿瘤(胶质瘤、脑膜瘤、无瘤和垂体瘤)。本研究旨在开发一种识别肿瘤的最佳 CNN 架构。我们使用的数据集来自 Kaggle,共有 5712 个训练数据和 1311 个测试数据。在提出的五种 CNN 架构中,架构 c 的准确率最高,达到 82.2%,参数数量不限,为 29605060。一个好的 CNN 架构有很多卷积层。我们还将提出的架构与 CNN 转移学习(Inception、ResNet-50 和 VGG16)进行了比较,发现 CNN 转移学习架构的准确率高于我们提出的架构。
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