about
LS-SNP/PDB: annotated non-synonymous SNPs mapped to Protein Data Bank structures.ECG morphological variability in beat space for risk stratification after acute coronary syndrome.Beatquency domain and machine learning improve prediction of cardiovascular death after acute coronary syndromeRole of the N-terminal lid in regulating the interaction of phosphorylated MDMX with p53.Artificial Intelligence-Based Breast Cancer Nodal Metastasis DetectionImpact of Deep Learning Assistance on the Histopathologic Review of Lymph Nodes for Metastatic Breast CancerAuthor Correction: Detection of anaemia from retinal fundus images via deep learningHow to develop machine learning models for healthcarePrediction of cardiovascular risk factors from retinal fundus photographs via deep learningDeep Learning and Glaucoma Specialists: The Relative Importance of Optic Disc Features to Predict Glaucoma Referral in Fundus PhotographsMeasuring clinician-machine agreement in differential diagnoses for dermatologyReply: 'The importance of study design in the application of artificial intelligence methods in medicine'How to Read Articles That Use Machine Learning: Users' Guides to the Medical LiteratureChest Radiograph Interpretation with Deep Learning Models: Assessment with Radiologist-adjudicated Reference Standards and Population-adjusted EvaluationDevelopment and validation of a deep learning algorithm for improving Gleason scoring of prostate cancerSimilar image search for histopathology: SMILYRemote Tool-Based Adjudication for Grading Diabetic RetinopathyDetection of anaemia from retinal fundus images via deep learningWhole-Slide Image Focus Quality: Automatic Assessment and Impact on AI Cancer DetectionAn augmented reality microscope with real-time artificial intelligence integration for cancer diagnosisAI papers in ophthalmology made simpleA deep learning system for differential diagnosis of skin diseasesDeep learning-based survival prediction for multiple cancer types using histopathology images
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description
researcher (ORCID 0000-0003-4079-8275)
@en
name
Yun Liu
@en
type
label
Yun Liu
@en
prefLabel
Yun Liu
@en
P108
P31
P496
0000-0003-4079-8275