Skip to main content
Erschienen in: International Journal of Computer Assisted Radiology and Surgery 5/2021

27.04.2021 | Original Article

Automatic identification of sweet spots from MERs for electrodes implantation in STN-DBS

verfasst von: Linxia Xiao, Caizi Li, Yanjiang Wang, Weixin Si, Doudou Zhang, Hai Lin, Xiaodong Cai, Pheng-Ann Heng

Erschienen in: International Journal of Computer Assisted Radiology and Surgery | Ausgabe 5/2021

Einloggen, um Zugang zu erhalten

Abstract

Purpose

Microelectrode recordings (MERs) are a significant clinical indicator for sweet spots identification of implanted electrodes during deep brain stimulation of the subthalamic nucleus (STN) surgery. As 1D MERs signals have the unboundedness, large-range, large-amount and time-dependent characteristics, the purpose of this study is to propose an automatic and precise identification method of sweet spots from MERs, reducing the time-consuming and labor-intensive human annotations.

Methods

We propose an automatic identification method of sweet spots from MERs for electrodes implantation in STN-DBS. To better imitate the surgeons’ observation and obtain more intuitive contextual information, we first employ the 2D Gramian angular summation field (GASF) images generated from MERs data to perform the sweet spots determination for electrodes implantation. Then, we introduce the convolutional block attention module into convolutional neural network (CNN) to identify the 2D GASF images of sweet spots for electrodes implantation.

Results

Experimental results illustrate that the identification result of our method is consistent with the result of doctor’s decision, while our method can achieve the accuracy and precision of 96.72% and 98.97%, respectively, which outperforms state-of-the-art for intraoperative sweet spots determination.

Conclusions

The proposed method is the first time to automatically and accurately identify sweet spots from MERs for electrodes implantation by the combination an advanced time series-to-image encoding way with CBAM-enhanced networks model. Our method can assist neurosurgeons in automatically detecting the most likely locations of sweet spots for electrodes implantation, which can provide an important indicator for target selection while it reduces the localization error of the target during STN-DBS surgery.
Literatur
1.
Zurück zum Zitat Karamintziou SD, Deligiannis NG, Piallat B, Polosan M, Chabardès S, David O, Stathis PG, Tagaris GA, Boviatsis EJ, Sakas DE, Polychronaki GE, Tsirogiannis GL, Nikita KS (2016) Dominant efficiency of nonregular patterns of subthalamic nucleus deep brain stimulation for Parkinson’s disease and obsessive-compulsive disorder in a data-driven computational model. J Neural Eng 13(1):16013CrossRef Karamintziou SD, Deligiannis NG, Piallat B, Polosan M, Chabardès S, David O, Stathis PG, Tagaris GA, Boviatsis EJ, Sakas DE, Polychronaki GE, Tsirogiannis GL, Nikita KS (2016) Dominant efficiency of nonregular patterns of subthalamic nucleus deep brain stimulation for Parkinson’s disease and obsessive-compulsive disorder in a data-driven computational model. J Neural Eng 13(1):16013CrossRef
2.
Zurück zum Zitat Gross RE, Krack P, Rodriguez-Oroz MC, Rezai AR, Benabid A (2006) Electrophysiological Mapping for the Implantation of Deep Brain Stimulators for Parkinson’s Disease and Tremor. Movement Disord: official journal of the Movement Disorder Society 21(S14):S259–S283CrossRef Gross RE, Krack P, Rodriguez-Oroz MC, Rezai AR, Benabid A (2006) Electrophysiological Mapping for the Implantation of Deep Brain Stimulators for Parkinson’s Disease and Tremor. Movement Disord: official journal of the Movement Disorder Society 21(S14):S259–S283CrossRef
3.
Zurück zum Zitat Michmizos KP, Konstantina SN (2011) Addition of deep brain stimulation signal to a local field potential driven Izhikevich model masks the pathological firing pattern of an STN neuron. In:2011 annual international conference of the IEEE engineering in medicine and biology society, pp 7290–7293 Michmizos KP, Konstantina SN (2011) Addition of deep brain stimulation signal to a local field potential driven Izhikevich model masks the pathological firing pattern of an STN neuron. In:2011 annual international conference of the IEEE engineering in medicine and biology society, pp 7290–7293
4.
Zurück zum Zitat Novak P, Przybyszewski AW, Barborica A, Ravin p, Margolin L, Pilitsis JG, (2011) Localization of the subthalamic nucleus in Parkinson disease using multiunit activity. J Neurol Sci 310(1):44–49 Novak P, Przybyszewski AW, Barborica A, Ravin p, Margolin L, Pilitsis JG, (2011) Localization of the subthalamic nucleus in Parkinson disease using multiunit activity. J Neurol Sci 310(1):44–49
5.
Zurück zum Zitat Wang Z, Oates T (2015) Encoding time series as images for visual inspection and classification using tiled convolutional neural networks. In: twenty-ninth AAAI conference on artificial intelligence Wang Z, Oates T (2015) Encoding time series as images for visual inspection and classification using tiled convolutional neural networks. In: twenty-ninth AAAI conference on artificial intelligence
6.
Zurück zum Zitat Hatami N, Gavet Y, Debayle J (2018) Classification of time-series images using deep convolutional neural networks. In: Tenth international conference on machine vision, pp 106960 Hatami N, Gavet Y, Debayle J (2018) Classification of time-series images using deep convolutional neural networks. In: Tenth international conference on machine vision, pp 106960
7.
Zurück zum Zitat Khosravi M, Atashzar SF, Gilmore G, Jog MS, Patel RV (2020) Intraoperative localization of STN during DBS surgery using a data-driven model. IEEE J Transl Eng He 8:1–9 Khosravi M, Atashzar SF, Gilmore G, Jog MS, Patel RV (2020) Intraoperative localization of STN during DBS surgery using a data-driven model. IEEE J Transl Eng He 8:1–9
8.
Zurück zum Zitat Schiaffino L, Muñoz A, Martínez JG (2016) STN area detection using K-NN classifiers for MER recordings in Parkinson patients during neurostimulator implant surgery. J Phys Conf Series 705(1):12050CrossRef Schiaffino L, Muñoz A, Martínez JG (2016) STN area detection using K-NN classifiers for MER recordings in Parkinson patients during neurostimulator implant surgery. J Phys Conf Series 705(1):12050CrossRef
9.
Zurück zum Zitat Woo S, Park J, Lee JY, Kweon IS (2018) CBAM: convolutional block attention module. In:2018 International proceedings of the European conference on computer vision, pp 3–19 Woo S, Park J, Lee JY, Kweon IS (2018) CBAM: convolutional block attention module. In:2018 International proceedings of the European conference on computer vision, pp 3–19
10.
Zurück zum Zitat Gao J, Wang Q, Yuan Y (2019) SCAR: spatial-/channel-wise attention regression networks for crowd counting. Neurocomputing 363:1–8CrossRef Gao J, Wang Q, Yuan Y (2019) SCAR: spatial-/channel-wise attention regression networks for crowd counting. Neurocomputing 363:1–8CrossRef
11.
Zurück zum Zitat Wang Q, Wu B, Zhu P, Li P, Hu Q (2020) ECA-net: Efficient channel attention for deep convolutional neural networks. In: 2020 Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, pp.11534–11542 Wang Q, Wu B, Zhu P, Li P, Hu Q (2020) ECA-net: Efficient channel attention for deep convolutional neural networks. In: 2020 Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, pp.11534–11542
12.
Zurück zum Zitat Wan KR, Maszczyk T, See AAQ, Dauwels J, King NKK (2019) A review on microelectrode recording selection of features for machine learning in deep brain stimulation surgery for Parkinson’s disease. Clin Neurophysiol 130(1):145–154CrossRef Wan KR, Maszczyk T, See AAQ, Dauwels J, King NKK (2019) A review on microelectrode recording selection of features for machine learning in deep brain stimulation surgery for Parkinson’s disease. Clin Neurophysiol 130(1):145–154CrossRef
13.
Zurück zum Zitat Rajpurohit V, Danish SF, Hargreaves EL, Wong S (2015) Optimizing computational feature sets for subthalamic nucleus localization in DBS surgery with feature selection. Clin Neurophysiol 126(5):975–982CrossRef Rajpurohit V, Danish SF, Hargreaves EL, Wong S (2015) Optimizing computational feature sets for subthalamic nucleus localization in DBS surgery with feature selection. Clin Neurophysiol 126(5):975–982CrossRef
14.
Zurück zum Zitat Valsky D, Marmor-Levin O, Deffains M, Eitan R, Blackwell KT, Bergman H, Israel Zvi (2016) Stop! border ahead: automatic detection of subthalamic exit during deep brain stimulation surgery. Mov Disord 32(1):70–79CrossRef Valsky D, Marmor-Levin O, Deffains M, Eitan R, Blackwell KT, Bergman H, Israel Zvi (2016) Stop! border ahead: automatic detection of subthalamic exit during deep brain stimulation surgery. Mov Disord 32(1):70–79CrossRef
15.
Zurück zum Zitat Karthick PA, Wan KR, Qi A, Dauwels J, King N (2020) Automated detection of subthalamic nucleus in deep brain stimulation surgery for parkinson’s disease using microelectrode recordings and wavelet packet features. J Neurosci Meth 343 Karthick PA, Wan KR, Qi A, Dauwels J, King N (2020) Automated detection of subthalamic nucleus in deep brain stimulation surgery for parkinson’s disease using microelectrode recordings and wavelet packet features. J Neurosci Meth 343
16.
Zurück zum Zitat Wong S, Baltuch GH, Jaggi JL, Danish SF (2009) Functional localization and visualization of the subthalamic nucleus from microelectrode recordings acquired during DBS surgery with unsupervised machine learning. J Neural Eng 6(2):26006CrossRef Wong S, Baltuch GH, Jaggi JL, Danish SF (2009) Functional localization and visualization of the subthalamic nucleus from microelectrode recordings acquired during DBS surgery with unsupervised machine learning. J Neural Eng 6(2):26006CrossRef
17.
Zurück zum Zitat Cardona H, Alvarez MA, Orozco AA (2018) Multi-task learning for subthalamic nucleus identification in deep brain stimulation. Int J Mach Learn Cyb 9(7):1181–1192CrossRef Cardona H, Alvarez MA, Orozco AA (2018) Multi-task learning for subthalamic nucleus identification in deep brain stimulation. Int J Mach Learn Cyb 9(7):1181–1192CrossRef
18.
Zurück zum Zitat Cao L, Li J, Zhou Y, Liu Y, Zhao Y, Liu H (2019) Online identification of functional regions in deep brain stimulation based on an unsupervised random forest with feature selection. J Nenural Eng 16(6) Cao L, Li J, Zhou Y, Liu Y, Zhao Y, Liu H (2019) Online identification of functional regions in deep brain stimulation based on an unsupervised random forest with feature selection. J Nenural Eng 16(6)
19.
Zurück zum Zitat Kingma DP, Ba J (2015) Adam: a method for stochastic optimization. In: 3rd international conference on learning representations Kingma DP, Ba J (2015) Adam: a method for stochastic optimization. In: 3rd international conference on learning representations
20.
Zurück zum Zitat Ay B, Yildirim O, Talo M, Baloglu UB, Aydin G, Puthankattil SD, Acharya UR (2019) Automated depression detection using deep representation and sequence learning with EEG signals. J Med Syst 43(7):205CrossRef Ay B, Yildirim O, Talo M, Baloglu UB, Aydin G, Puthankattil SD, Acharya UR (2019) Automated depression detection using deep representation and sequence learning with EEG signals. J Med Syst 43(7):205CrossRef
Metadaten
Titel
Automatic identification of sweet spots from MERs for electrodes implantation in STN-DBS
verfasst von
Linxia Xiao
Caizi Li
Yanjiang Wang
Weixin Si
Doudou Zhang
Hai Lin
Xiaodong Cai
Pheng-Ann Heng
Publikationsdatum
27.04.2021
Verlag
Springer International Publishing
Erschienen in
International Journal of Computer Assisted Radiology and Surgery / Ausgabe 5/2021
Print ISSN: 1861-6410
Elektronische ISSN: 1861-6429
DOI
https://doi.org/10.1007/s11548-021-02377-2

Weitere Artikel der Ausgabe 5/2021

International Journal of Computer Assisted Radiology and Surgery 5/2021 Zur Ausgabe

Screening-Mammografie offenbart erhöhtes Herz-Kreislauf-Risiko

26.04.2024 Mammografie Nachrichten

Routinemäßige Mammografien helfen, Brustkrebs frühzeitig zu erkennen. Anhand der Röntgenuntersuchung lassen sich aber auch kardiovaskuläre Risikopatientinnen identifizieren. Als zuverlässiger Anhaltspunkt gilt die Verkalkung der Brustarterien.

S3-Leitlinie zu Pankreaskrebs aktualisiert

23.04.2024 Pankreaskarzinom Nachrichten

Die Empfehlungen zur Therapie des Pankreaskarzinoms wurden um zwei Off-Label-Anwendungen erweitert. Und auch im Bereich der Früherkennung gibt es Aktualisierungen.

Fünf Dinge, die im Kindernotfall besser zu unterlassen sind

18.04.2024 Pädiatrische Notfallmedizin Nachrichten

Im Choosing-Wisely-Programm, das für die deutsche Initiative „Klug entscheiden“ Pate gestanden hat, sind erstmals Empfehlungen zum Umgang mit Notfällen von Kindern erschienen. Fünf Dinge gilt es demnach zu vermeiden.

„Nur wer sich gut aufgehoben fühlt, kann auch für Patientensicherheit sorgen“

13.04.2024 Klinik aktuell Kongressbericht

Die Teilnehmer eines Forums beim DGIM-Kongress waren sich einig: Fehler in der Medizin sind häufig in ungeeigneten Prozessen und mangelnder Kommunikation begründet. Gespräche mit Patienten und im Team können helfen.

Update Radiologie

Bestellen Sie unseren Fach-Newsletter und bleiben Sie gut informiert.