There are no reviews yet. Be the first to send feedback to the community and the maintainers!
deep-learning-classification-mammographic-mass
Data Set Information: Mammography is the most effective method for breast cancer screening available today. However, the low positive predictive value of breast biopsy resulting from mammogram interpretation leads to approximately 70% unnecessary biopsies with benign outcomes. To reduce the high number of unnecessary breast biopsies, several computer-aided diagnosis (CAD) systems have been proposed in the last years.These systems help physicians in their decision to perform a breast biopsy on a suspicious lesion seen in a mammogram or to perform a short term follow-up examination instead. This data set can be used to predict the severity (benign or malignant) of a mammographic mass lesion from BI-RADS attributes and the patient's age. It contains a BI-RADS assessment, the patient's age and three BI-RADS attributes together with the ground truth (the severity field) for 516 benign and 445 malignant masses that have been identified on full field digital mammograms collected at the Institute of Radiology of the University Erlangen-Nuremberg between 2003 and 2006. Each instance has an associated BI-RADS assessment ranging from 1 (definitely benign) to 5 (highly suggestive of malignancy) assigned in a double-review process by physicians. Assuming that all cases with BI-RADS assessments greater or equal a given value (varying from 1 to 5), are malignant and the other cases benign, sensitivities and associated specificities can be calculated. These can be an indication of how well a CAD system performs compared to the radiologists. Class Distribution: benign: 516; malignant: 445leukemia-classification-using-efficientnet
breast-cancer-wisconsin-random-forest-classifierwith-deploy
alzheimer-s-classification_with-2-models
emotion-recognition-with-vgg16
dandelion-classification-using-resnet50
Classification-of-Breast-Cancer-BC-
Breast Cancer Wisconsin (Diagnostic)Course_Data_Science
The Basics Data Science (BDS)Prediction-using-LSTM
What-is-Google-Colab-and-how-can-I-use-it
Prediction_Solar
sms-spam-with-6-algorithm
Cat_Dog_Recognition_CNN
skin-cancer-classification-using-DL
Chronic_Kidney_Disease_classification-
brain_tumor_detection
-Orchid-Detection-With-VVG-19
epileptic-seizure-recognition-using-deep-learning
Parkinson-s-Disease_7_Algorithm
skin-cancer-classification-with-vgg16-resnet50
Mobile-Price-Classification-using-6-Algorithms
Iris-with-Machine-Learning
iris.Machine Learning _ 5 algorithmslarge-scale-fish-classification-nasnetmobile
stroke-prediction-using-deep-learning-
Emotion-recognition-with-resnet50
Covid-19-_Disease-_Diagnosis-With-ResNet50
Predicting-House-Prices-4-projects
Installing-TensorFlow-Version-2.0-Keras-Python-3.8-in-Windows-10
titanic-survival-with-6-algorithms
Iris.DeepLearning
cat-dog-recognition-vgg16
IMDB_RNN-LSTM-and-GRU
Detector_two_Model
Iris.Machine-Learning-
Iris.Machine Learning _ 5 algorithmscassava-leaf-disease-classifica-mobilenet-vgg19
Love Open Source and this site? Check out how you can help us