Selection of an Adaptive Test Statistic for Use with Multiple Comparison Analyses of Neuroimaging Data

NeuroImage ◽  
2000 ◽  
Vol 12 (2) ◽  
pp. 219-229 ◽  
Author(s):  
Federico Turkheimer ◽  
Karen Pettigrew ◽  
Louis Sokoloff ◽  
Carolyn Beebe Smith ◽  
Kathleen Schmidt
2011 ◽  
Vol 21 (5) ◽  
pp. 863-872 ◽  
Author(s):  
Stephanie Nikolaus ◽  
Christina Bode ◽  
Erik Taal ◽  
Mart A. F. J. vd Laar

2014 ◽  
Vol 2014 ◽  
pp. 1-11 ◽  
Author(s):  
Zhenhu Liang ◽  
Yinghua Wang ◽  
Yongshao Ren ◽  
Duan Li ◽  
Logan Voss ◽  
...  

Burst suppression is a unique electroencephalogram (EEG) pattern commonly seen in cases of severely reduced brain activity such as overdose of general anesthesia. It is important to detect burst suppression reliably during the administration of anesthetic or sedative agents, especially for cerebral-protective treatments in various neurosurgical diseases. This study investigates recurrent plot (RP) analysis for the detection of the burst suppression pattern (BSP) in EEG. The RP analysis is applied to EEG data containing BSPs collected from 14 patients. Firstly we obtain the best selection of parameters for RP analysis. Then, the recurrence rate (RR), determinism (DET), and entropy (ENTR) are calculated. Then RR was selected as the best BSP index one-way analysis of variance (ANOVA) and multiple comparison tests. Finally, the performance of RR analysis is compared with spectral analysis, bispectral analysis, approximate entropy, and the nonlinear energy operator (NLEO). ANOVA and multiple comparison tests showed that the RR could detect BSP and that it was superior to other measures with the highest sensitivity of suppression detection (96.49%, P=0.03). Tracking BSP patterns is essential for clinical monitoring in critically ill and anesthetized patients. The purposed RR may provide an effective burst suppression detector for developing new patient monitoring systems.


Author(s):  
Samarendra Das ◽  
Shesh N. Rai

Selection of biologically relevant genes from high dimensional expression data is a key research problem in gene expression genomics. Most of the available gene selection methods are either based on relevancy or redundancy measure, which are usually adjudged through post selection classification accuracy. Through these methods the ranking of genes was done on a single high-dimensional expression data, which leads to the selection of spuriously associated and redundant genes. Hence, we developed a statistical approach through combining Support Vector Machine with Maximum Relevance and Minimum Redundancy under a sound statistical setup for the selection of biologically relevant genes. Here, the genes are selected through statistical significance values computed using a non-parametric test statistic under a bootstrap based subject sampling model. Further, a systematic and rigorous evaluation of the proposed approach with nine existing competitive methods was carried on six different real crop gene expression datasets. This performance analysis was carried out under three comparison settings, i.e. subject classification, biological relevant criteria based on quantitative trait loci, and gene ontology. Our analytical results showed that the proposed approach selects genes that are more biologically relevant as compared to the existing methods. Moreover, the proposed approach was also found to be better with respect to the competitive existing methods. The proposed statistical approach provides a framework for combining filter, and wrapper methods of gene selection.


Galaxies ◽  
2019 ◽  
Vol 7 (1) ◽  
pp. 31
Author(s):  
Xuejie Dai ◽  
Zhongxiang Wang ◽  
Jithesh Vadakkumthani

We are starting a project to find γ -ray millisecond pulsars (MSPs) among the unidentified sources detected by the Large Area Telescope (LAT) onboard the Fermi Gamma-Ray Space Telescope (Fermi), by radio observations. The selection of good candidates from analysis of the LAT data is an important part of the project. Given that there is more than 10 years worth of LAT data and the advent of the newly released LAT 8-year point source list (FL8Y), we have conducted a selection analysis, on the basis of our previous analysis, and report the results here. Setting the requirements for the unidentified sources in FL8Y of Galactic latitudes | b | > 5 ∘ and curvature significances >3 σ , there are 202 sources with detection signficances >6 σ . We select 57 relatively bright ones (detection significances >15 σ ) and analyze their 10.2 years of LAT data. Their variability is checked to exclude variable sources (likely blazars), test statistic maps are constructed to avoid contaminated sources, and curvature significances are re-obtained and compared to their γ -ray spectra to exclude non-significant sources. In the end, 48 candidates are found. Based on the available information, mostly from multi-wavelength studies, we discuss the possible nature of several of the candidates. Most of these candidates are currently being observed with the 65-meter Shanghai Tian Ma Radio Telescope.


2010 ◽  
Vol 10 (1) ◽  
Author(s):  
M. Wiese ◽  
C. H. Van Heerden ◽  
Y. Jordaan

Purpose: To investigate the choice factors students consider when selecting a higher education institution, with a focus on the differences between gender and language groups. Problem investigated: The educational landscape has seen several changes, such as stronger competition between institutions for both student enrolments and government funding. These market challenges have led to an interest in students' institution selection processes as it has implications for the way higher education institutions (HEIs) manage their marketing and recruitment strategies. The research objective of this study was to identify the most important choice factors of prospective South African students. It also aimed to determine if any gender and language differences exist with regard to students' institution selection processes. Methodology: A convenience sample of 1 241 respondents was drawn, representing six South African universities. A self-administrated questionnaire was used to collect the data. Questions from the ASQ (Admitted Student Questionnaire) and CIRP (The Cooperative Institutional Research Programme) were used and adapted to the South African context after pilot testing. Hypotheses were analysed using the multivariate analysis of variance (MANOVA) test with Wilks' lambda as the test statistic. Findings/Implications: Irrespective of gender or language, the most important choice factor for respondents was the quality of teaching at HEIs. The findings showed that males and females differ according to the selection of certain choice factors which suggest that HEIs can consider recruitment strategies for each gender group. Significant differences between the language groups were found for 17 of the 23 choice factors, signalling that different language groups make decisions based on different choice factors. African language-speaking students have, amongst other, indicated that the multiculturalism of the institution is a very important choice factor for them. Conclusion: The findings provide HEIs with an indication of the importance of choice factors considered by students in selecting a HEI. This will enable HEIs to use their limited funds more efficiently to attract the right calibre student (recruitment policies), to create a unique position, to sagment the student market more appropriately and to gain a competitive advantage.


2021 ◽  
Vol 3 (1) ◽  
pp. 47-54
Author(s):  
Nor Adilah Mohamad Nor Azman ◽  
Nor Aishah Ahad ◽  
Friday Zinzendoff Okwonu

Moses test is a nonparametric method to test the equality of two dispersion parameters. The Moses test does not assume equality of location parameters, and this fact gives the test wider applicability. However, this test is inefficient since different people applying the test will obtain different values because of a random process. One sub-division may lead to significant results where another does not. To overcome the problem of uniqueness of the result, this study proposed to modify the random selection of the observation for the subsamples based on the ranking procedure to lead for a unique result for each solution. The original and modified Moses test were tested on the same data set. The finding shows that the result for both tests is similar in terms of decision and conclusion. The analysis revealed that the modified Moses test based on ranking approach has a smaller sum of squared values compared to the original Moses test. Thus, the variability of data for each subsample is decreased as well. Ranking approach can be used as an alternative to replacing the random procedure of selecting observations for subsample to overcome the problem of uniqueness in the test statistic.


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