scholarly journals The identification of a diagnostic biomarker panel for canine osteoarthritis

Author(s):  
Bridget C. Garner
2008 ◽  
Vol 18 (11) ◽  
pp. 1430-1437 ◽  
Author(s):  
Zobair M. Younossi ◽  
Mohammed Jarrar ◽  
Clare Nugent ◽  
Manpreet Randhawa ◽  
Mariam Afendy ◽  
...  

2018 ◽  
Vol 39 (suppl_1) ◽  
Author(s):  
M A Elhadad ◽  
R Wilson ◽  
S Zaghlool ◽  
C Huth ◽  
J Kriebel ◽  
...  

2018 ◽  
Author(s):  
Thangesweran Ayakannu ◽  
Anthony H. Taylor ◽  
Timothy H. Marczylo ◽  
Mauro Maccarrone ◽  
Justin C. Konje

2008 ◽  
Vol 48 ◽  
pp. S14-S15
Author(s):  
Z.M. Younossi ◽  
M. Jarrar ◽  
C. Nugent ◽  
M. Randhawa ◽  
M. Afendy ◽  
...  

2018 ◽  
Vol 8 (1) ◽  
Author(s):  
Bipradeb Singha ◽  
Sandra L. Harper ◽  
Aaron R. Goldman ◽  
Benjamin G. Bitler ◽  
Katherine M. Aird ◽  
...  

2019 ◽  
Author(s):  
Harpreet Kaur ◽  
Anjali Dhall ◽  
Rajesh Kumar ◽  
Gajendra P. S. Raghava

AbstractThe high mortality rate of hepatocellular carcinoma (HCC) is primarily due to its late diagnosis. In the past numerous attempts have been made to design genetic biomarkers for the identification of HCC; unfortunately, most of the studies are based on a small dataset obtained from a specific platform or lack of their reasonable validation performance on the external datasets. In order to identify a universal expression-based diagnostic biomarker panel for HCC that can be applicable across multiple platforms; we have employed large scale transcriptomic profiling datasets containing a total of 2,306 HCC and 1,655 non-tumorous tissue samples. These samples were obtained from 29 studies generated by mainly four types of profiling techniques include Affymetrix, Illumina, Agilent and High-throughput-seq, which implemented a wide range of platforms. Firstly, we scrutinized 26 genes that are differentially expressed or regulated in uniform pattern among numerous datasets. Subsequently, we identified three genes (FCN3, CLEC1B, & PRC1) panel-based HCC biomarker using different machine learning techniques include Simple-threshold based approach, Extra Trees, Support Vector Machine, Random Forest, K Neighbors Classifier, Logistic Regression etc. Three-genes panel-based HCC biomarker classified HCC samples and non-tumorous samples of training and three external validation datasets with an accuracy between 93 to 98% and AUROC (Area Under Receiver Operating Characteristic curve) in a range of 0.97 to 1.0. Furthermore, the prognostic potential of these genes was evaluated on TCGA cohort and GSE14520 cohort using univariate survival analysis revealed that these genes are independent prognostic indicators for various types of the survivals, i.e. OS (Overall Survival), PFS (Progression-Free Survival), DFS/RFS (Disease-Free Survival/Recurrence-Free Survival) and DSS (Disease-Specific Survival) of HCC patients and significantly stratify high-risk and low-risk HCC patients (p-value <0.05). In conclusion, we identified a universal platform-independent three genes-based biomarker that can predict HCC patients with high precision; also possess significant prognostic potential. Eventually, to provide service to the scientific community, we developed a webserver HCCPred based on the above study (http://webs.iiitd.edu.in/raghava/hccpred/).


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