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Electrocardiographic deep learning for predicting post-procedural mortality: a model development and validation study - The Lancet Digital Health
Electrocardiographic deep learning for predicting post-procedural mortality: a model development and validation study - The Lancet Digital Health
A deep-learning algorithm interpreting preoperative ECGs can improve discrimination of postoperative mortality. The deep-learning algorithm worked equally well for risk stratification of cardiac surgeries, non-cardiac surgeries, and catheterisation laboratory procedures, and was validated in three independent health-care systems. This algorithm can provide additional information to clinicians making the decision to perform medical procedures and stratify the risk of future complications.
·thelancet.com·
Electrocardiographic deep learning for predicting post-procedural mortality: a model development and validation study - The Lancet Digital Health
Acquired Resistance to Therapy Network (ARTNet) - NCI
Acquired Resistance to Therapy Network (ARTNet) - NCI
Acquired Resistance to Therapy Network (ARTNet) focuses on the mechanistic bases of acquired resistance to cancer therapies and disease recurrence. Its goal is to balance basic, pre-clinical, and translational research that will enable hypothesis testing on the biological basis of resistance in clinically relevant models.
·cancer.gov·
Acquired Resistance to Therapy Network (ARTNet) - NCI
OPNET ACE Live VMon Reveals Virtual Network Performance - Preview
OPNET ACE Live VMon Reveals Virtual Network Performance - Preview
While the vast majority of today’s IT shops have deployed server virtualization technologies, a significant minority of operations teams feel that they have all of the management tools they need
·enterprisemanagement.com·
OPNET ACE Live VMon Reveals Virtual Network Performance - Preview
KimiaNet – A Trained Network for Histopathology Image Representation – Kimia Lab
PreOp Surgery Patient Education *** - YouTube
PreOp Surgery Patient Education *** - YouTube
http://bit.ly/PreOpFacebook or http://bit.ly/PreOpTwitter or https://preop.com - Patient Education - 617-244-7591The PreOp Surgery Centers, patient education...
·youtube.com·
PreOp Surgery Patient Education *** - YouTube
ECG-Based Deep Learning and Clinical Risk Factors to Predict Atrial Fibrillation | Circulation
ECG-Based Deep Learning and Clinical Risk Factors to Predict Atrial Fibrillation | Circulation
Background: Artificial intelligence (AI)–enabled analysis of 12-lead ECGs may facilitate efficient estimation of incident atrial fibrillation (AF) risk. However, it remains unclear whether AI provide
·ahajournals.org·
ECG-Based Deep Learning and Clinical Risk Factors to Predict Atrial Fibrillation | Circulation
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CancerNet: a unified deep learning network for pan-cancer diagnostics | BMC Bioinformatics | Full Text
CancerNet: a unified deep learning network for pan-cancer diagnostics | BMC Bioinformatics | Full Text
Background Despite remarkable advances in cancer research, cancer remains one of the leading causes of death worldwide. Early detection of cancer and localization of the tissue of its origin are key to effective treatment. Here, we leverage technological advances in machine learning or artificial intelligence to design a novel framework for cancer diagnostics. Our proposed framework detects cancers and their tissues of origin using a unified model of cancers encompassing 33 cancers represented in The Cancer Genome Atlas (TCGA). Our model exploits the learned features of different cancers reflected in the respective dysregulated epigenomes, which arise early in carcinogenesis and differ remarkably between different cancer types or subtypes, thus holding a great promise in early cancer detection. Results Our comprehensive assessment of the proposed model on the 33 different tissues of origin demonstrates its ability to detect and classify cancers to a high accuracy (> 99% overall F-measure). Furthermore, our model distinguishes cancers from pre-cancerous lesions to metastatic tumors and discriminates between hypomethylation changes due to age related epigenetic drift and true cancer. Conclusions Beyond detection of primary cancers, our proposed computational model also robustly detects tissues of origin of secondary cancers, including metastatic cancers, second primary cancers, and cancers of unknown primaries. Our assessment revealed the ability of this model to characterize pre-cancer samples, a significant step forward in early cancer detection. Deployed broadly this model can deliver accurate diagnosis for a greatly expanded target patient population.
·bmcbioinformatics.biomedcentral.com·
CancerNet: a unified deep learning network for pan-cancer diagnostics | BMC Bioinformatics | Full Text
Development and validation of a machine learning method to predict intraoperative red blood cell transfusions in cardiothoracic surgery | Scientific Reports
Development and validation of a machine learning method to predict intraoperative red blood cell transfusions in cardiothoracic surgery | Scientific Reports
Scientific Reports - Development and validation of a machine learning method to predict intraoperative red blood cell transfusions in cardiothoracic surgery
·nature.com·
Development and validation of a machine learning method to predict intraoperative red blood cell transfusions in cardiothoracic surgery | Scientific Reports
KecNet: A Light Neural Network for Arrhythmia Classification Based on Knowledge Reinforcement
Knee Replacement Surgery: All You Need To Know 🏥🔧 #PreOp #SurgeryTips | PreOp® Patient Education - YouTube
Knee Replacement Surgery: All You Need To Know 🏥🔧 #PreOp #SurgeryTips | PreOp® Patient Education - YouTube
https://preop.com/knee-replacement-surgery/Knee Replacement SurgeryKnee replacement surgery, also known as knee arthroplasty, is a procedure that involves re...
·youtube.com·
Knee Replacement Surgery: All You Need To Know 🏥🔧 #PreOp #SurgeryTips | PreOp® Patient Education - YouTube
Prediction of Cardiovascular Parameters With Supervised Machine Learning From Singapore “I” Vessel Assessment and OCT-Angiography: A Pilot Study | TVST | ARVO Journals