脑疾病分类与MRI年龄估计

S. Xavier, Eddula Sai Manoj, Bande Rohith, K. Abhilash, Velangini Amith Reddy G
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引用次数: 0

摘要

深度神经网络可以有效地用于预测导致患者的脑部疾病类型和估计患者的年龄。这可以用于识别年龄相关的疾病。所以,我们正在使用MobileNet一个机器学习算法,和Res Net深度卷积神经网络,通过迁移学习。在迁移学习中,这些模型是在较大的数据集上进行预训练的。这些算法已被用于训练大脑MRI扫描,这些扫描被分为三类[1]正常,没有受到任何疾病的影响,[2]轻度认知障碍,[3]阿尔茨海默病。从分类照片中很容易确定患者的年龄。我们将使用MRI图像数据集以及伴随的疾病类型,使用MOBILENET和RESNET算法来训练我们的模型。通过使用这些知识,该模型可以识别核磁共振数据中的模式,指出特定的脑部疾病和患者的年龄。利用训练好的模型进一步查找患者的疾病类型和年龄。结果表明,该技术能够在涉及疾病分类和年龄估计的任务中实现高精度。总的来说,通过MRI扫描对脑部疾病进行分类和确定年龄的建议技术为提高脑部疾病患者的医疗诊断和治疗计划的有效性和准确性提供了一个可行的答案。利用该模型可以在较短的时间内预测更大规模实时数据的结果。
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Brain Disease Classification along with Age Estimation from MRI
Deep neural networks can effectively be used to predict the type of brain disease caused to the patient and to estimate the age of the patient. This can be used for identifying the age related disorders. So, we are using MobileNet a machine learning algorithm, and Res Net deep convolutional neural network, by using transfer learning. In transfer learning these models are pre trained on larger data sets. These algorithms have been used to train brain MRI scans that have been divided into three classes [1] Normal, which has not been affected by any disease, [2] Mild Cognitive Impairment, and [3] Alzheimer disease. From the categorized photographs the age of the patient is determined easily. We are going to train our model by using MOBILENET and RESNET algorithms by using the dataset of MRI images along with the accompanying disease type.By using this knowledge, the model may identify patterns in the MRI data that point to particular brain illnesses and patient age. The trained model is further used to find the disease type and age of the patients. The outcomes demonstrate that the technique is capable of achieving high accuracy in tasks involving both disease categorization and age estimation. In general, the suggested techniques for categorizing brain disorders and determining age from MRI scans offer a viable answer for enhancing the effectiveness and precision of medical diagnosis and treatment planning for patients with brain diseases. By this model we can predict results in larger scale real time data in short period of time.
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