该项目建立了一个用于在超声图像中对乳腺癌进行分类的CNN模型。实现97%的准确性,它详细介绍了模型的开发、测试和未来的改进
This project builds a CNN model for classifying breast cancer in ultrasound images. Achieving 97% accuracy, it details the model s development, testing, and future improvements (2024-03-05, Jupyter Notebook, 0KB, 下载0次)
高效的基于基因表达(微阵列数据)和ML-DL算法的准确分类方法...
Here, we describe the comparison of the most used algorithms in classical ML and DL to classify carcinogenic tumors described on 11_tumor data base, obtaining accuracies between 76.97% and 100% for tumor identification. Our results bring up a more efficient an accurate classification method based on gene expression (microarray data) and ML/DL (2020-04-13, Jupyter Notebook, 4487KB, 下载0次)
COVID-19-CT-Diagnose,预训练(imagenet)ResNet50,3种分类。测试准确率达到97.2%。使用渐变CAM进行感染区域检测...
Pretrained (imagenet) ResNet50 with 3 classification. Achieves 97.2% test accuracy. Use Grad-CAM for infected area segmentation. (2023-05-14, Jupyter Notebook, 6619KB, 下载0次)
COVID19 X射线分类器,一种使用X射线或CT-SCAN对阳性或阴性COVID19进行分类的分类器,准确率为99%,召回率为97%(macr...
A classifier that takes X-RAY or CT-SCAN to classify positive or negative COVID19 with 99% accuracy, 97% recall (macro avg) and 91% precision (macro avg). (2023-05-14, Jupyter Notebook, 2264KB, 下载0次)