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Fonksiyonel Nöronal Görüntülerde Aktivasyonların Yerini Belirlemek için Değişim Noktası Algılama Yöntemleri

Year 2022, Volume: 9 Issue: 1, 541 - 554, 30.06.2022
https://doi.org/10.35193/bseufbd.1091035

Abstract

fMRI görüntüleri için en yaygın analizde amaç, deneyde görevler olarak verilen ilgili uyaranlara karşılık beyinde görsel işleme veya motor işlevler gibi belirli işlevlere yanıt veren konumları bulan aktivasyon tespitidir. Öte yandan, aktivasyonun tetiklendiği anın tespit edilmesi de önemlidir. Herhangi bir verinin anormal davranışını analiz edebilen güçlü tekniklerden biri de değişim noktası (DN) analizidir. CP algılama algoritmalarının, fonksiyonel manyetik rezonans görüntüleme (fMRI) dizilerindeki aktivasyonları bulmak için de kullanılabileceğini öneriyoruz. Makalemiz bu açıdan iki yönlü yenilikçi bir çalışma sunmaktadır. İlk olarak, son teknoloji bir konu olarak fMRI sinyallerindeki aktivasyonları bulmak için CP algılama algoritmalarını kullanmayı öneriyoruz. Ayrıca, bu tür noktaları bulmak için bir dizi değişim noktası analiz yöntemi, regresyon tabanlı yöntem, istatistiksel yöntem ve kayan çift pencere yöntemi öneriyor ve karşılaştırıyoruz. İkinci olarak, bu yöntemleri, fMRI görevlerini gerçekleştirirken gerçek deneklerden elde edilen fMRI sinyallerine uyguluyoruz. Önerilen yöntemler, bir motor görev, bir görsel görev ve bir dilsel görev olmak üzere üç farklı fMRI deneyine uygulandı. Analiz, yöntemlerin, istatistiksel parametrik haritalar (SPM) gibi yerleşik yöntemlere uygun aktivasyonlar bulduğunu göstermektedir. Elde edilen %94'e varan sonuçlar, aynı zamanda önerilen yöntemlerin fMRI zaman serilerinde aktivasyon anlarını bulmak için etkin bir şekilde kullanılabileceğini göstermektedir.

References

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Change Point Detection Methods for Locating Activations in Functional Neuronal Images

Year 2022, Volume: 9 Issue: 1, 541 - 554, 30.06.2022
https://doi.org/10.35193/bseufbd.1091035

Abstract

The most common analysis for fMRI images is activation detection, in which the purpose is to find the locations in the brain that respond to specific functions, such as visual processing or motor functions by providing related stimuli as tasks in the experiment. On the other hand, it is also important to detect the instance the activation is triggered. One of the powerful techniques that can analyze the abnormal behavior of any data is change point (CP) analysis. We suggest that CP detection algorithms also can be used to locate the activations in functional magnetic resonance imaging (fMRI) sequences, as well. Our paper presents a two-fold innovative study in that respect. First, we propose to use CP detection algorithms to locate the activations in fMRI signals as a state-of-art topic. Furthermore, we propose and compare a set of change point analysis methods, a regression-based method (RBM), a statistical method (SM), and a mean difference of double sliding windows method (MDSW)) to locate such points. Second, we apply these methods to the fMRI signals, which are acquired from the real subjects, while they were performing fMRI tasks. Proposed methods were applied to three different fMRI experiments with a motor task, a visual task, and a linguistic task. The analysis shows that the methods find activations in accordance with established methods such as statistical parametric maps (SPM). The acquired up to 94 % results also show that the proposed methods can be used effectively to locate the activation times on fMRI time series.

References

  • Sargun, D., & Koksal C.E. (2021). “Robust Change Detection via Information Projection,” IEEE Journal on Selected Areas in Information. Theory, 2(2), 774-784.
  • Kass-Hout T.A., Xu, Z., Mc Murray, P., Park, S. Buckeridge, D.L. Brownstein, J.S., Finelli, L., & Groseclose, S.L. (2012). “Application of change point analysis to daily influenza-like illness emergency department visits,” J. Am. Med. Inform. Assoc. JAMIA, 19(6), 1075–1081.
  • Zhang, N.R., Siegmund, D. O., Ji, H., & Li, J. Z. (2010). “Detecting simultaneous change points in multiple sequences,” Biometrika, 97(3), 631–645.
  • Feber, A., Guilhamon, P., Lechner, M., Fenton, T., Wilson, G.A., Thirlwell, C., Morris, T. J., Flanagan, A.M., Teschendorff, A.E., Kelly, J.D., & Beck, S. (2014). “Using high-density DNA methylation arrays to profile copy number alterations”, Genome Bio., 15(2), R30.
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  • Gallagher, C., Lund, R. & Robbins, M., (2012). Change point detection in daily precipitation data, Environmetrics, 23(5), 407–419.
  • Perreault, L., Bernier, J., Bobée, B., & Parent, B. (2000). Bayesian change-point analysis in hydrometeorological time series. Part 1. The normal model revisited, J. Hydrol., 235(3), 221–241.
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  • Wu, W. B., Woodroofe, M., & Mentz, G. (2001). Isotonic Regression: Another Look at the Change Point Problem, Biometrika, 88(3), 793–804.
  • Hu, S., & Zhao, L. (2015). A Support Vector Machine Based Multi-Kernel Method for Change Point Estimation on Control Chart, IEEE Int’l Conf. on Systems, Man, and Cybernetics, Hong Kong, China, 492–496.
  • Kazemi, M. S., Kazemi, K., Yaghoobi, M. A. & Bazargan, H. (2016). A hybrid method for estimating the process change point using support vector machine and fuzzy statistical clustering, Appl. Soft Comput., (40), 507–516.
  • Aminikhanghahi, S., & Cook, D. J. (2017). A survey of methods for time series change point detection, Knowl. Inf. Syst., 51(2), 339–367.
  • Candemir, C., & Oğuz, K., (2017). A Comparative Study on Parameter Selection and Outlier Removal for Change Point Detection in Time Series, IEEE European conf. on Elec. Engineering and comp. Sci. (EECS), Bern, Switzerland, doi: 10.1109/EECS.2017.48
  • Deichmann, R. (2009). Principles of MRI and Functional MRI, in fMRI Techniques and Protocols, Humana Press, Totowa, NJ, 3–29.
  • Ogawa, S., Lee, T. M., Kay, A. R., & Tank, D. W. (1990). Brain magnetic resonance imaging with contrast dependent on blood oxygenation, Proc. Natl. Acad. Sci. U. S. A., 87(24), 9868–9872.
  • Handwerker, D. A., Ollinger, J. M., & D’Esposito, M. (2004). Variation of BOLD hemodynamic responses across subjects and brain regions and their effects on statistical analyses, NeuroImage, 21(4), 1639–1651.
  • Xin L., Yu P.L.H., & Lam K. (2013). An Application of CUSUM Chart on Financial Trading, 9th Int’l Conf. on Computational Intelligence and Security, 14-15 December, China.
  • Callegari C., Pagano M., & Giordiano S., (2017). CUSUM-based and entropy-based anomaly detection: An Experimental comparison, 8th Int’l Conference on the Network of the Future, 22-24 Nov., London
  • Polunchenko, A.S., (2018). Optimal Design of the Shiryaev-Roberts Chart: Give Your Shiryaev-Roberts a Headstar, Frontiers in Statistical Quality Control, 12, 65-86.
  • Pollak, M. & Siegmund, D. (1985). On robustness of the Shiryaev–Roberts change-point detection procedure under parameter misspecification in the post-change distribution, Communications in Statistics - Theory and Methods, 72(2), 2185-2206.
  • Wen Y.,Wu J., Zhou Q., & Tseng T., (2019). Multiple-Change-Point Modeling and Exact Bayesian Inference of Degradation Signal for Prognostic Improvement, IEEE Trans. on Auto. Sci and Eng., 16(2), 613-628.
  • Nath S., Wu J., (2018). Bayesian Quickest Change Point Detection with Multiple Candidates of Post-Change Models, IEEE Global Conf. on Signal and Information Processing, 26-29 Nov, Anaheim, USA.
  • Geng J., & Lai L., (2013). Bayesian Quickest change point detection and localization in sensor networks, IEEE Global Conf. on Signal and Information Processing, 3-5 Dec., Austin TX, USA.
  • Adams, R. P., & MacKay, D. J., (2007). Bayesian online change point detection, ArXivPrepr. ArXiv:0710.3742.
  • Saatçi, Y., Turner, R. D., & Rasmussen, C. E. (2010). Gaussian process change point models, Proceedings of the 27th Int’l Conf. on Mach. Learn. (ICML-10), 10, 927–934.
  • Carlin, B. P., Gelfand, A. E., & Smith, A. F. M. (1992). Hierarchical Bayesian Analysis of Changepoint Problems, J. R. Stat. Soc. Ser. C Appl. Stat., 41(2), 389–405.
  • Loschi, R. H. & Cruz, F. R. B.(2005). Bayesian identification of multiple change points in poisson data, Adv. Complex Syst., 08(4), 465–482.
  • Yao, Y.-C. (1988). Estimating the number of change-points via Schwarz’ criterion,” Stat. Probab. Lett., 6(3), 181–189.
  • Whiteley, N., Andrieu, C. & Doucet, A. (2011). Bayesian computational methods for inference in multiple change-points models, submitted for publication.
  • Ruggieri, E., & Antonellis, M. (2016). An exact approach to Bayesian sequential change point detection, Comput. Stat. Data Anal., 97, 71–86.
  • Chopin, N. (2007). Dynamic Detection of Change Points in Long Time Series, Ann. Inst. Stat. Math., 59(2), 349–366.
  • Barry, D., & Hartigan, J. A., (1993). A Bayesian Analysis for Change Point Problems, J. Am. Stat. Assoc., 88(421), 309–319.
  • Hinkley, D. V. (1970). Inference About the Change-Point in a Sequence of Random Variables, Biometrika, 57(1), 1–17.
  • Hinkley, D. V. (1972). Time-Ordered Classification, Biometrika, 59(3), 509–523.
  • Joseph, L. & Wolfson, D. B. (1992). Estimation in multi-path change-point problems, Commun. Stat.- Theory Methods, 21(4), 897–913.
  • Zou, C., Liu, Y., Qin, P., & Wang, Z. (2007). Empirical likelihood ratio test for the change-point problem, Stat. Probab. Lett., 77(4), 374–382.
  • Diop M.L., & Kengne W., (2020). Poisson QMLE for change-point detection in general integer-valued series, arxiv.org, doi: https://doi.org/10.48550/arXiv.2007.13858.
  • Bai, J. (2000). Vector autoregressive models with structural changes in regression coefficients and in variance-covariance matrices, Ann. Econ. Finance, 1(2), 303-339.
  • Geng J., Zhang B., Huie L.M., & Lai L., (2019). Online Change-Point Detectşon of Linear Regression Models, IEEE Trans. on Signal Processing, 67(12), 3316–3329.
  • Loschi R., Pontel J.G., & Cruz F.R.B., (2010). Multiple Change -Point Analysis for Linear Regression Models, Chilean Journal of Statistics, 1(2), 93-112.
  • Brown, R.L., Durbin, J., & Evans, J. M., (1975). Techniques for Testing the Constancy of Regression Relationships over Time, J. R. Stat. Soc. Ser. B Methodol., 37(2), 149–192.
  • Bai, J. (1997). Estimation of a Change Point in Multiple Regression Models, Rev. Econ. Stat., 79(4), 551–563.
  • Jandhyala, V. K., & MacNeill, I. B. (1991), Tests for parameter changes at unknown times in linear regression models, J. Stat. Plan. Inference,.27(3), 291–316.
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There are 74 citations in total.

Details

Primary Language English
Subjects Engineering
Journal Section Articles
Authors

Cemre Candemir 0000-0001-9850-137X

Kaya Oğuz 0000-0002-1860-9127

Publication Date June 30, 2022
Submission Date March 21, 2022
Acceptance Date May 30, 2022
Published in Issue Year 2022 Volume: 9 Issue: 1

Cite

APA Candemir, C., & Oğuz, K. (2022). Change Point Detection Methods for Locating Activations in Functional Neuronal Images. Bilecik Şeyh Edebali Üniversitesi Fen Bilimleri Dergisi, 9(1), 541-554. https://doi.org/10.35193/bseufbd.1091035