Skip to main content
Top
Published in: Soft Computing 18/2019

26-09-2018 | Methodologies and Application

Artificial bee colony clustering with self-adaptive crossover and stepwise search for brain functional parcellation in fMRI data

Authors: Xuewu Zhao, Junzhong Ji, Aidong Zhang

Published in: Soft Computing | Issue 18/2019

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

The emergence of functional magnetic resonance imaging (fMRI) provides a good opportunity for brain functional parcellation. However, the high dimension and low signal-to-noise ratio of fMRI data brings difficulties to the existing parcellation methods. To address the issue, this paper presents a novel brain functional parcellation method based on artificial bee colony clustering (ABCC) algorithm with self-adaptive crossover and stepwise search (called CSABCC). In CSABCC, the preprocessed fMRI data is first mapped into a low-dimensional space by spectral mapping to reduce its dimension and each food source position is encoded as a clustering solution composed of cluster centers. Then, CSABCC utilizes an improved artificial bee colony search procedure with some robustness advantage to seek better food sources, where a self-adaptive crossover is employed to enhance information exchange between individuals and onlooker bees adopt a stepwise search to improve its search capability. Finally, a functional parcellation result is obtained by mapping cluster labels onto the corresponding voxels. The experiments on simulated fMRI data show that CSABCC can generate the parcellation closest to the real result, and these results on real insula fMRI data also demonstrate that CSABCC has better search capability and can produce parcellation structures with stronger functional consistency and regional continuity compared to some other typical algorithms. Moreover, the correctness of the parcellation results is also validated by functional connectivity fingerprints of the corresponding subregions.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Literature
go back to reference Arslan S, Rueckert D (2015) Multi-level parcellation of the cerebral cortex using resting-state fMRI. In: International conference on medical image computing and computer-assisted intervention, Springer, pp 47–54 Arslan S, Rueckert D (2015) Multi-level parcellation of the cerebral cortex using resting-state fMRI. In: International conference on medical image computing and computer-assisted intervention, Springer, pp 47–54
go back to reference Arslan S, Ktena SI, Makropoulos A, Robinson EC, Rueckert D, Parisot S (2017) Human brain mapping: a systematic comparison of parcellation methods for the human cerebral cortex. Neuroimage 170:5–30CrossRef Arslan S, Ktena SI, Makropoulos A, Robinson EC, Rueckert D, Parisot S (2017) Human brain mapping: a systematic comparison of parcellation methods for the human cerebral cortex. Neuroimage 170:5–30CrossRef
go back to reference Balsters JH, Mantini D, Wenderoth N (2018) Connectivity-based parcellation reveals distinct cortico-striatal connectivity fingerprints in autism spectrum disorder. NeuroImage 170:412–423CrossRef Balsters JH, Mantini D, Wenderoth N (2018) Connectivity-based parcellation reveals distinct cortico-striatal connectivity fingerprints in autism spectrum disorder. NeuroImage 170:412–423CrossRef
go back to reference Baumgartner R, Scarth G, Teichtmeister C, Somorjai R, Moser E (1997) Fuzzy clustering of gradientecho functional mri in the human visual cortex. Part I: reproducibility. J Magn Reson Imaging 7(6):1094–1101CrossRef Baumgartner R, Scarth G, Teichtmeister C, Somorjai R, Moser E (1997) Fuzzy clustering of gradientecho functional mri in the human visual cortex. Part I: reproducibility. J Magn Reson Imaging 7(6):1094–1101CrossRef
go back to reference Blumensath T, Behrens TE, Smith SM (2012) Resting-state fMRI single subject cortical parcellation based on region growing. In: International conference on medical image computing and computer-assisted intervention, Springer, pp 188–195 Blumensath T, Behrens TE, Smith SM (2012) Resting-state fMRI single subject cortical parcellation based on region growing. In: International conference on medical image computing and computer-assisted intervention, Springer, pp 188–195
go back to reference Blumensath T, Jbabdi S, Glasser MF, Van Essen DC, Ugurbil K, Behrens TE, Smith SM (2013) Spatially constrained hierarchical parcellation of the brain with resting-state fMRI. Neuroimage 76(1):313–324CrossRef Blumensath T, Jbabdi S, Glasser MF, Van Essen DC, Ugurbil K, Behrens TE, Smith SM (2013) Spatially constrained hierarchical parcellation of the brain with resting-state fMRI. Neuroimage 76(1):313–324CrossRef
go back to reference Cauda F, Costa T, Torta DM, Sacco K, D’Agata F, Duca S, Geminiani G, Fox PT, Vercelli A (2012) Meta-analytic clustering of the insular cortex: characterizing the meta-analytic connectivity of the insula when involved in active tasks. Neuroimage 62(1):343–355CrossRef Cauda F, Costa T, Torta DM, Sacco K, D’Agata F, Duca S, Geminiani G, Fox PT, Vercelli A (2012) Meta-analytic clustering of the insular cortex: characterizing the meta-analytic connectivity of the insula when involved in active tasks. Neuroimage 62(1):343–355CrossRef
go back to reference Cha J, Jo HJ, Gibson WS, Lee JM (2017) Functional organization of the human posterior cingulate cortex, revealed by multiple connectivity-based parcellation methods. Hum Brain Mapp 38(6):2808–2818CrossRef Cha J, Jo HJ, Gibson WS, Lee JM (2017) Functional organization of the human posterior cingulate cortex, revealed by multiple connectivity-based parcellation methods. Hum Brain Mapp 38(6):2808–2818CrossRef
go back to reference Chang LJ, Yarkoni T, Khaw MW, Sanfey AG (2013) Decoding the role of the insula in human cognition: functional parcellation and large-scale reverse inference. Cereb Cortex 23(3):739–749CrossRef Chang LJ, Yarkoni T, Khaw MW, Sanfey AG (2013) Decoding the role of the insula in human cognition: functional parcellation and large-scale reverse inference. Cereb Cortex 23(3):739–749CrossRef
go back to reference Chuang YC, Chen CT, Hwang C (2015) A real-coded genetic algorithm with a direction-based crossover operator. Inf Sci 305:320–348CrossRef Chuang YC, Chen CT, Hwang C (2015) A real-coded genetic algorithm with a direction-based crossover operator. Inf Sci 305:320–348CrossRef
go back to reference Craddock RC, James GA, Rd HP, Hu XP, Mayberg HS (2012) A whole brain fMRI atlas generated via spatially constrained spectral clustering. Hum Brain Mapp 33(8):1914–1928CrossRef Craddock RC, James GA, Rd HP, Hu XP, Mayberg HS (2012) A whole brain fMRI atlas generated via spatially constrained spectral clustering. Hum Brain Mapp 33(8):1914–1928CrossRef
go back to reference Deen B, Pitskel NB, Pelphrey KA (2011) Three systems of insular functional connectivity identified with cluster analysis. Cereb Cortex 21(7):1498–506CrossRef Deen B, Pitskel NB, Pelphrey KA (2011) Three systems of insular functional connectivity identified with cluster analysis. Cereb Cortex 21(7):1498–506CrossRef
go back to reference Dornas JV, Braun J (2018) Finer parcellation reveals detailed correlational structure of resting-state fMRI signals. J Neurosci Methods 294:15–33CrossRef Dornas JV, Braun J (2018) Finer parcellation reveals detailed correlational structure of resting-state fMRI signals. J Neurosci Methods 294:15–33CrossRef
go back to reference Duval ER, Joshi SA, Block SR, Abelson JL, Liberzon I (2018) Insula activation is modulated by attention shifting in social anxiety disorder. J Anxiety Disord 56:56–62CrossRef Duval ER, Joshi SA, Block SR, Abelson JL, Liberzon I (2018) Insula activation is modulated by attention shifting in social anxiety disorder. J Anxiety Disord 56:56–62CrossRef
go back to reference Fathy YY, de Jong FJ, van Dam AM, Rozemuller AJ, van de Berg WD (2017) Insular cortex sub-region-dependent distribution pattern of \(\alpha \)-synuclein immunoreactivity in parkinson’s disease and dementia with lewy bodies. bioRxiv pp 1569–1584 Fathy YY, de Jong FJ, van Dam AM, Rozemuller AJ, van de Berg WD (2017) Insular cortex sub-region-dependent distribution pattern of \(\alpha \)-synuclein immunoreactivity in parkinson’s disease and dementia with lewy bodies. bioRxiv pp 1569–1584
go back to reference Genon S, Reid A, Li H, Fan L, Müller VI, Cieslik EC, Hoffstaedter F, Langner R, Grefkes C, Laird AR et al (2017) The heterogeneity of the left dorsal premotor cortex evidenced by multimodal connectivity-based parcellation and functional characterization. NeuroImage 170:400–411CrossRef Genon S, Reid A, Li H, Fan L, Müller VI, Cieslik EC, Hoffstaedter F, Langner R, Grefkes C, Laird AR et al (2017) The heterogeneity of the left dorsal premotor cortex evidenced by multimodal connectivity-based parcellation and functional characterization. NeuroImage 170:400–411CrossRef
go back to reference Hale JR, Mayhew SD, Mullinger KJ, Wilson RS, Arvanitis TN, Francis ST, Bagshaw AP (2015) Comparison of functional thalamic segmentation from seed-based analysis and ICA. NeuroImage 114:448–465CrossRef Hale JR, Mayhew SD, Mullinger KJ, Wilson RS, Arvanitis TN, Francis ST, Bagshaw AP (2015) Comparison of functional thalamic segmentation from seed-based analysis and ICA. NeuroImage 114:448–465CrossRef
go back to reference Hassanpour MS, Simmons WK, Feinstein JS, Luo Q, Lapidus RC, Bodurka J, Paulus MP, Khalsa SS (2018) The insular cortex dynamically maps changes in cardiorespiratory interoception. Neuropsychopharmacology 43(2):426–434CrossRef Hassanpour MS, Simmons WK, Feinstein JS, Luo Q, Lapidus RC, Bodurka J, Paulus MP, Khalsa SS (2018) The insular cortex dynamically maps changes in cardiorespiratory interoception. Neuropsychopharmacology 43(2):426–434CrossRef
go back to reference Honnorat N, Eavani H, Satterthwaite TD, Gur RE, Gur RC, Davatzikos C (2015) GraSP: geodesic graph-based segmentation with shape priors for the functional parcellation of the cortex. Neuroimage 106:207–221CrossRef Honnorat N, Eavani H, Satterthwaite TD, Gur RE, Gur RC, Davatzikos C (2015) GraSP: geodesic graph-based segmentation with shape priors for the functional parcellation of the cortex. Neuroimage 106:207–221CrossRef
go back to reference Ilango SS, Vimal S, Kaliappan M, Subbulakshmi P (2018) Optimization using artificial bee colony based clustering approach for big data. Clust Comput 4:1–9 Ilango SS, Vimal S, Kaliappan M, Subbulakshmi P (2018) Optimization using artificial bee colony based clustering approach for big data. Clust Comput 4:1–9
go back to reference Inkaya T, Kayaligil S, Ozdemirel NE (2016) Swarm intelligence-based clustering algorithms: a survey. In: Celebi M, Aydin K (eds) Unsupervised Learning Algorithms. Springer, Cham, pp 303–341CrossRef Inkaya T, Kayaligil S, Ozdemirel NE (2016) Swarm intelligence-based clustering algorithms: a survey. In: Celebi M, Aydin K (eds) Unsupervised Learning Algorithms. Springer, Cham, pp 303–341CrossRef
go back to reference James GA, Hazaroglu O, Bush KA (2016) A human brain atlas derived via n-cut parcellation of resting-state and task-based fMRI data. Magn Reson Imaging 34(2):209–218CrossRef James GA, Hazaroglu O, Bush KA (2016) A human brain atlas derived via n-cut parcellation of resting-state and task-based fMRI data. Magn Reson Imaging 34(2):209–218CrossRef
go back to reference Janssen RJ, Jylnki P, Kessels RP, van Gerven MA (2015) Probabilistic model-based functional parcellation reveals a robust, fine-grained subdivision of the striatum. Neuroimage 119:398–405CrossRef Janssen RJ, Jylnki P, Kessels RP, van Gerven MA (2015) Probabilistic model-based functional parcellation reveals a robust, fine-grained subdivision of the striatum. Neuroimage 119:398–405CrossRef
go back to reference Jiang L, Xu T, He Y, Hou XH, Wang J, Cao XY, Wei GX, Yang Z, He Y, Zuo XN (2015) Toward neurobiological characterization of functional homogeneity in the human cortex: regional variation, morphological association and functional covariance network organization. Brain Struct Funct 220(5):2485–2507CrossRef Jiang L, Xu T, He Y, Hou XH, Wang J, Cao XY, Wei GX, Yang Z, He Y, Zuo XN (2015) Toward neurobiological characterization of functional homogeneity in the human cortex: regional variation, morphological association and functional covariance network organization. Brain Struct Funct 220(5):2485–2507CrossRef
go back to reference Jung WH, Jang JH, Park JW, Kim E, Goo EH, Im OS, Kwon JS (2014) Unravelling the intrinsic functional organization of the human striatum: a parcellation and connectivity study based on resting-state fMRI. PlOS ONE 9(9):e106,768CrossRef Jung WH, Jang JH, Park JW, Kim E, Goo EH, Im OS, Kwon JS (2014) Unravelling the intrinsic functional organization of the human striatum: a parcellation and connectivity study based on resting-state fMRI. PlOS ONE 9(9):e106,768CrossRef
go back to reference Karaboga D (2005) An idea based on honey bee swarm for numerical optimization. Tech. rep., Technical report-tr06, Erciyes University, Engineering Faculty, Computer Engineering Department Karaboga D (2005) An idea based on honey bee swarm for numerical optimization. Tech. rep., Technical report-tr06, Erciyes University, Engineering Faculty, Computer Engineering Department
go back to reference Katanoda K, Matsuda Y, Sugishita M (2002) A spatio-temporal regression model for the analysis of functional MRI data. Neuroimage 17(3):1415–1428CrossRef Katanoda K, Matsuda Y, Sugishita M (2002) A spatio-temporal regression model for the analysis of functional MRI data. Neuroimage 17(3):1415–1428CrossRef
go back to reference Liu C, Abu-Jamous B, Brattico E, Nandi AK (2016) Towards tunable consensus clustering for studying functional brain connectivity during affective processing. Int J Neural Syst 27(2):1–16 Liu C, Abu-Jamous B, Brattico E, Nandi AK (2016) Towards tunable consensus clustering for studying functional brain connectivity during affective processing. Int J Neural Syst 27(2):1–16
go back to reference Liu F, Gao J, Di N, Adler LS (2015) Nectar attracts foraging honey bees with components of their queen pheromones. J Chem Ecol 41(11):1028–1036CrossRef Liu F, Gao J, Di N, Adler LS (2015) Nectar attracts foraging honey bees with components of their queen pheromones. J Chem Ecol 41(11):1028–1036CrossRef
go back to reference Liu X, Chen X, Zheng W, Xia M, Han Y, Song H, Li K, He Y, Wang Z (2018) Altered functional connectivity of insular subregions in alzheimers disease. Front Aging Neurosci 10:107–118CrossRef Liu X, Chen X, Zheng W, Xia M, Han Y, Song H, Li K, He Y, Wang Z (2018) Altered functional connectivity of insular subregions in alzheimers disease. Front Aging Neurosci 10:107–118CrossRef
go back to reference Maggioni E, Tana MG, Arrigoni F, Zucca C, Bianchi AM (2014) Constructing fmri connectivity networks: a whole brain functional parcellation method for node definition. J Neurosci Methods 228(10):86–99CrossRef Maggioni E, Tana MG, Arrigoni F, Zucca C, Bianchi AM (2014) Constructing fmri connectivity networks: a whole brain functional parcellation method for node definition. J Neurosci Methods 228(10):86–99CrossRef
go back to reference Mann PS, Singh S (2017) Artificial bee colony metaheuristic for energy-efficient clustering and routing in wireless sensor networks. Soft Comput 21(22):6699–6712CrossRef Mann PS, Singh S (2017) Artificial bee colony metaheuristic for energy-efficient clustering and routing in wireless sensor networks. Soft Comput 21(22):6699–6712CrossRef
go back to reference Mejia AF, Nebel MB, Shou H, Crainiceanu CM, Pekar JJ, Mostofsky S, Caffo B, Lindquist MA (2015) Improving reliability of subject-level resting-state fmri parcellation with shrinkage estimators. NeuroImage 112:14–29CrossRef Mejia AF, Nebel MB, Shou H, Crainiceanu CM, Pekar JJ, Mostofsky S, Caffo B, Lindquist MA (2015) Improving reliability of subject-level resting-state fmri parcellation with shrinkage estimators. NeuroImage 112:14–29CrossRef
go back to reference Mishra A, Rogers BP, Li MC, Gore JC (2014) Functional connectivity-based parcellation of amygdala using self-organized mapping: a data driven approach. Hum Brain Mapp 35(4):1247–1260CrossRef Mishra A, Rogers BP, Li MC, Gore JC (2014) Functional connectivity-based parcellation of amygdala using self-organized mapping: a data driven approach. Hum Brain Mapp 35(4):1247–1260CrossRef
go back to reference Nebel MB, Joel SE, Muschelli J, Barber AD, Caffo BS, Pekar JJ, Mostofsky SH (2014) Disruption of functional organization within the primary motor cortex in children with autism. Hum Brain Mapp 35(2):567–580CrossRef Nebel MB, Joel SE, Muschelli J, Barber AD, Caffo BS, Pekar JJ, Mostofsky SH (2014) Disruption of functional organization within the primary motor cortex in children with autism. Hum Brain Mapp 35(2):567–580CrossRef
go back to reference Nomi JS, Farrant K, Damaraju E, Rachakonda S, Calhoun VD, Uddin LQ (2016) Dynamic functional network connectivity reveals unique and overlapping profiles of insula subdivisions. Hum Brain Mapp 37(5):1770–1787CrossRef Nomi JS, Farrant K, Damaraju E, Rachakonda S, Calhoun VD, Uddin LQ (2016) Dynamic functional network connectivity reveals unique and overlapping profiles of insula subdivisions. Hum Brain Mapp 37(5):1770–1787CrossRef
go back to reference Ogawa S, Lee TM, Kay AR, Tank DW (1990) Brain magnetic resonance imaging with contrast dependent on blood oxygenation. Proc Natl Acad Sci USA 87(24):9868–9872CrossRef Ogawa S, Lee TM, Kay AR, Tank DW (1990) Brain magnetic resonance imaging with contrast dependent on blood oxygenation. Proc Natl Acad Sci USA 87(24):9868–9872CrossRef
go back to reference Park By, Tark KJ, Shim WM, Park H (2018) Functional connectivity based parcellation of early visual cortices. Hum Brain Mapp 39(3):1380–1390CrossRef Park By, Tark KJ, Shim WM, Park H (2018) Functional connectivity based parcellation of early visual cortices. Hum Brain Mapp 39(3):1380–1390CrossRef
go back to reference Peng X, Lin P, Wu X, Gong R, Yang R, Wang J (2017) Insular subdivisions functional connectivity dysfunction within major depressive disorder. J Affect Disord 227:280–288CrossRef Peng X, Lin P, Wu X, Gong R, Yang R, Wang J (2017) Insular subdivisions functional connectivity dysfunction within major depressive disorder. J Affect Disord 227:280–288CrossRef
go back to reference Perri RL, Berchicci M, Bianco V, Spinelli D, Di Russo F (2018) Brain waves from an isolated cortex: contribution of the anterior insula to cognitive functions. Brain Struct Funct 223(3):1343–1355 Perri RL, Berchicci M, Bianco V, Spinelli D, Di Russo F (2018) Brain waves from an isolated cortex: contribution of the anterior insula to cognitive functions. Brain Struct Funct 223(3):1343–1355
go back to reference Plantinga BR, Temel Y, Duchin Y, Uludag K, Patriat R, Roebroeck A, Kuijf M, Jahanshahi A, Ter HRB, Vitek J (2016) Individualized parcellation of the subthalamic nucleus in patients with parkinson’s disease with 7T MRI. Neuroimage 168:403–411CrossRef Plantinga BR, Temel Y, Duchin Y, Uludag K, Patriat R, Roebroeck A, Kuijf M, Jahanshahi A, Ter HRB, Vitek J (2016) Individualized parcellation of the subthalamic nucleus in patients with parkinson’s disease with 7T MRI. Neuroimage 168:403–411CrossRef
go back to reference Rausch A, Zhang W, Beckmann CF, Buitelaar JK, Groen WB, Haak KV (2018) Connectivity-based parcellation of the amygdala predicts social skills in adolescents with autism spectrum disorder. J Autism Dev Disord 48(2):572–582CrossRef Rausch A, Zhang W, Beckmann CF, Buitelaar JK, Groen WB, Haak KV (2018) Connectivity-based parcellation of the amygdala predicts social skills in adolescents with autism spectrum disorder. J Autism Dev Disord 48(2):572–582CrossRef
go back to reference Rge RE, Madsen KH, Schmidt MN, Mrup M (2017) Infinite von mises-fisher mixture modeling of whole brain fMRI data. Neural Comput 29(10):2712–2741MathSciNetCrossRefMATH Rge RE, Madsen KH, Schmidt MN, Mrup M (2017) Infinite von mises-fisher mixture modeling of whole brain fMRI data. Neural Comput 29(10):2712–2741MathSciNetCrossRefMATH
go back to reference Rogers-Carter MM, Varela JA, Gribbons KB, Pierce AF, McGoey MT, Ritchey M, Christianson JP (2018) Insular cortex mediates approach and avoidance responses to social affective stimuli. Nat Neurosci 21(3):404–414CrossRef Rogers-Carter MM, Varela JA, Gribbons KB, Pierce AF, McGoey MT, Ritchey M, Christianson JP (2018) Insular cortex mediates approach and avoidance responses to social affective stimuli. Nat Neurosci 21(3):404–414CrossRef
go back to reference Ryali S, Chen T, Supekar K, Menon V (2013) A parcellation scheme based on von Mises-Fisher distributions and Markov random fields for segmenting brain regions using resting-state fMRI. Neuroimage 65(1):83–96CrossRef Ryali S, Chen T, Supekar K, Menon V (2013) A parcellation scheme based on von Mises-Fisher distributions and Markov random fields for segmenting brain regions using resting-state fMRI. Neuroimage 65(1):83–96CrossRef
go back to reference Sahoo G (2017) A two-step artificial bee colony algorithm for clustering. Neural Comput Appl 28(3):537–551 Sahoo G (2017) A two-step artificial bee colony algorithm for clustering. Neural Comput Appl 28(3):537–551
go back to reference Taherkhani M, Safabakhsh R (2016) A novel stability-based adaptive inertia weight for particle swarm optimization. Appl Soft Comput 38:281–295CrossRef Taherkhani M, Safabakhsh R (2016) A novel stability-based adaptive inertia weight for particle swarm optimization. Appl Soft Comput 38:281–295CrossRef
go back to reference Van Oort ES, Mennes M, Schröder TN, Kumar VJ, Jimenez NIZ, Grodd W, Doeller CF, Beckmann CF (2017) Functional parcellation using time courses of instantaneous connectivity. NeuroImage 170:30–41 Van Oort ES, Mennes M, Schröder TN, Kumar VJ, Jimenez NIZ, Grodd W, Doeller CF, Beckmann CF (2017) Functional parcellation using time courses of instantaneous connectivity. NeuroImage 170:30–41
go back to reference Vercelli U, Diano M, Costa T, Nani A, Duca S, Geminiani G, Vercelli A, Cauda F (2016) Node detection using high-dimensional fuzzy parcellation applied to the insular cortex. Neural Plast 5–6:1–8CrossRef Vercelli U, Diano M, Costa T, Nani A, Duca S, Geminiani G, Vercelli A, Cauda F (2016) Node detection using high-dimensional fuzzy parcellation applied to the insular cortex. Neural Plast 5–6:1–8CrossRef
go back to reference Wang Q, Chen R, Jaja J, Jin Y, Hong LE, Herskovits EH (2016) Connectivity-based brain parcellation. Neuroinformatics 14(1):83–97CrossRef Wang Q, Chen R, Jaja J, Jin Y, Hong LE, Herskovits EH (2016) Connectivity-based brain parcellation. Neuroinformatics 14(1):83–97CrossRef
go back to reference Wig GS, Laumann TO, Cohen AL, Power JD, Nelson SM, Glasser MF, Miezin FM, Snyder AZ, Schlaggar BL, Petersen SE (2014) Parcellating an individual subject’s cortical and subcortical brain structures using snowball sampling of resting-state correlations. Cereb Cortex 24(8):2036–2054CrossRef Wig GS, Laumann TO, Cohen AL, Power JD, Nelson SM, Glasser MF, Miezin FM, Snyder AZ, Schlaggar BL, Petersen SE (2014) Parcellating an individual subject’s cortical and subcortical brain structures using snowball sampling of resting-state correlations. Cereb Cortex 24(8):2036–2054CrossRef
go back to reference Yamada T, Itahashi T, Nakamura M, Watanabe H, Kuroda M, Ohta H, Kanai C, Kato N, Hashimoto R (2016) Altered functional organization within the insular cortex in adult males with high-functioning autism spectrum disorder: evidence from connectivity-based parcellation. Mol Autism 7(1):41–55CrossRef Yamada T, Itahashi T, Nakamura M, Watanabe H, Kuroda M, Ohta H, Kanai C, Kato N, Hashimoto R (2016) Altered functional organization within the insular cortex in adult males with high-functioning autism spectrum disorder: evidence from connectivity-based parcellation. Mol Autism 7(1):41–55CrossRef
go back to reference Zaman M, Elsayed SM, Ray T, Sarker RA (2016) Evolutionary algorithms for dynamic economic dispatch problems. IEEE Trans Power Syst 31(2):1486–1495CrossRef Zaman M, Elsayed SM, Ray T, Sarker RA (2016) Evolutionary algorithms for dynamic economic dispatch problems. IEEE Trans Power Syst 31(2):1486–1495CrossRef
go back to reference Zhang Y, Caspers S, Fan L, Fan Y, Song M, Liu C, Mo Y, Roski C, Eickhoff S, Amunts K (2015) Robust brain parcellation using sparse representation on resting-state fMRI. Brain Struct Funct 220(6):3565–3579CrossRef Zhang Y, Caspers S, Fan L, Fan Y, Song M, Liu C, Mo Y, Roski C, Eickhoff S, Amunts K (2015) Robust brain parcellation using sparse representation on resting-state fMRI. Brain Struct Funct 220(6):3565–3579CrossRef
go back to reference Zhao XW, Ji JZ, Liang PP (2016) The human brain functional parcellation based on fmri data (in chinese). Chin Sci Bull 61(18):2035–2052CrossRef Zhao XW, Ji JZ, Liang PP (2016) The human brain functional parcellation based on fmri data (in chinese). Chin Sci Bull 61(18):2035–2052CrossRef
go back to reference Zhao XW, Ji JZ, Yao Y (2017) Insula functional parcellation by searching gaussian mixture model using immune clonal selection algorithm. J Zhejiang Univ (Eng Sci) 51(12):2320–2331 Zhao XW, Ji JZ, Yao Y (2017) Insula functional parcellation by searching gaussian mixture model using immune clonal selection algorithm. J Zhejiang Univ (Eng Sci) 51(12):2320–2331
go back to reference Zhu G, Kwong S (2010) Gbest-guided artificial bee colony algorithm for numerical function optimization. Appl Math Comput 217(7):3166–3173MathSciNetMATH Zhu G, Kwong S (2010) Gbest-guided artificial bee colony algorithm for numerical function optimization. Appl Math Comput 217(7):3166–3173MathSciNetMATH
Metadata
Title
Artificial bee colony clustering with self-adaptive crossover and stepwise search for brain functional parcellation in fMRI data
Authors
Xuewu Zhao
Junzhong Ji
Aidong Zhang
Publication date
26-09-2018
Publisher
Springer Berlin Heidelberg
Published in
Soft Computing / Issue 18/2019
Print ISSN: 1432-7643
Electronic ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-018-3467-4

Other articles of this Issue 18/2019

Soft Computing 18/2019 Go to the issue

Premium Partner