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Xin Lin
PhD
,
School of Computer Science
Email
XIN.LIN
NOTTINGHAM.EDU
CN
h-index
1
Citations
1
h-index
Calculated based on number of publications stored in Pure and citations from Scopus
2021
2021
Research activity per year
Overview
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Dive into the research topics where Xin Lin is active. These topic labels come from the works of this person. Together they form a unique fingerprint.
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Keyphrases
Artificial Neural Network
83%
Artificial Neural Network Classifier
20%
Biological Samples
13%
Cell Classification
83%
Cell Separation
27%
Cell Sorting
13%
Cell State
16%
Cell-to-cell
44%
Cellular Data
34%
Class Classification
13%
Classification Features
27%
Classification Results
13%
Comparative Analysis
83%
Data Dimensionality
13%
Data Partitioning
20%
Data Variability
13%
Differential Expression
16%
Experimental Cells
34%
Expressed Genes
83%
Expression Characteristics
16%
Fluorescence-activated Cell Sorting
13%
Gene Expression
16%
Gene Expression Data
41%
Gene Feature
33%
Gene Markers
83%
Gene number
13%
Immunomagnetic Separation
13%
Label Consistency
20%
Main Cells
20%
Mislabeling
16%
Mislabels
20%
MRNA Expression
83%
Natural Killer Cells
20%
Network Profile
83%
Overall Classification Accuracy
16%
PBMC Cells
83%
Peripheral Blood Mononuclear Cells
100%
Prediction Model
16%
Processing Strategies
13%
Protein Markers
83%
Public Repositories
20%
RNA Markers
66%
RNA-protein Complex
33%
Single Cell-type
83%
Single-cell Gene Expression
44%
Single-cell Transcriptomics
13%
Small Sets
83%
Specific Genes
16%
Specimen Preparation
13%
Supervised Machine Learning
83%
Computer Science
Artificial Neural Network
83%
Class Classification
27%
classification result
27%
Comparative Analysis
83%
Gene Expression Data
83%
Gene Expression Data Set
83%
Individual Cell
83%
Learning Approach
83%
Machine Learning
83%
Machine Learning Algorithm
27%
Processing Strategy
27%
Public Repository
83%
Set Partition
83%