Non-linear Manifold Clustering based on Conformity Index

Author(s):  
Mahlagha Sedghi ◽  
George Atia ◽  
Michael Georgiopoulos
2013 ◽  
Vol 312 ◽  
pp. 650-654 ◽  
Author(s):  
Yi Lin He ◽  
Guang Bin Wang ◽  
Fu Ze Xu

Characteristic signals in rotating machinery fault diagnosis with the issues of complex and difficult to deal with, while the use of non-linear manifold learning method can effectively extract low-dimensional manifold characteristics embedded in the high-dimensional non-linear data. It greatly maintains the overall geometric structure of the signals and improves the efficiency and reliability of the rotating machinery fault diagnosis. According to the development prospects of manifold learning, this paper describes four classical manifold learning methods and each advantages and disadvantages. It reviews the research status and application of fault diagnosis based on manifold learning, as well as future direction of researches in the field of manifold learning fault diagnosis.


Strain ◽  
2015 ◽  
Vol 51 (4) ◽  
pp. 324-331 ◽  
Author(s):  
N. Dervilis ◽  
I. Antoniadou ◽  
E. J. Cross ◽  
K. Worden
Keyword(s):  

2021 ◽  
pp. 102278
Author(s):  
Di Folco Maxime ◽  
Moceri Pamela ◽  
Clarysse Patrick ◽  
Duchateau Nicolas

2010 ◽  
Vol 17 (5) ◽  
pp. 1058-1069
Author(s):  
Gang-guo Li ◽  
Zheng-zhi Wang ◽  
Xiao-min Wang ◽  
Qing-shan Ni ◽  
Bo Qiang

2020 ◽  
Author(s):  
Soufiane Mourragui ◽  
Marco Loog ◽  
Daniel J. Vis ◽  
Kat Moore ◽  
Anna G. Manjon ◽  
...  

AbstractPre-clinical models have been the workhorse of cancer research for decades. While powerful, these models do not fully recapitulate the complexity of human tumors. Consequently, translating biomarkers of drug response from pre-clinical models to human tumors has been particularly challenging. To explicitly take these differences into account and enable an efficient exploitation of the vast pre-clinical drug response resources, we developed TRANSACT, a novel computational framework for clinical drug response prediction. First, TRANSACT employs non-linear manifold learning to capture biological processes active in pre-clinical models and human tumors. Then, TRANSACT builds predictors on cell line response only and transfers these to Patient-Derived Xenografts (PDXs) and human tumors. TRANSACT outperforms four competing approaches, including Deep Learning approaches, for a set of 15 drugs on PDXs, TCGA cohorts and 226 metastatic tumors from the Hartwig Medical Foundation data. For only four drugs Deep Learning outperforms TRANSACT. We further derived an algorithmic approach to interpret TRANSACT and used it to validate the approach by identifying known biomarkers to targeted therapies and we propose novel putative biomarkers of resistance to Paclitaxel and Gemcitabine.


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