144 related articles for article (PubMed ID: 38063156)
41. Validation of a wearable forehead sleep recorder against polysomnography in sleep staging and desaturation events in a clinical sample.
Chen X; Jin X; Zhang J; Ho KW; Wei Y; Cheng H
J Clin Sleep Med; 2023 Apr; 19(4):711-718. PubMed ID: 36689310
[TBL] [Abstract][Full Text] [Related]
42. Validation of photoplethysmography- and acceleration-based sleep staging in a community sample: comparison with polysomnography and Actiwatch.
Liu PK; Ting N; Chiu HC; Lin YC; Liu YT; Ku BW; Lee PL
J Clin Sleep Med; 2023 Oct; 19(10):1797-1810. PubMed ID: 37338335
[TBL] [Abstract][Full Text] [Related]
43. Sleep staging from single-channel EEG with multi-scale feature and contextual information.
Chen K; Zhang C; Ma J; Wang G; Zhang J
Sleep Breath; 2019 Dec; 23(4):1159-1167. PubMed ID: 30863994
[TBL] [Abstract][Full Text] [Related]
44. A Hierarchical Neural Network for Sleep Stage Classification Based on Comprehensive Feature Learning and Multi-Flow Sequence Learning.
Sun C; Chen C; Li W; Fan J; Chen W
IEEE J Biomed Health Inform; 2020 May; 24(5):1351-1366. PubMed ID: 31478877
[TBL] [Abstract][Full Text] [Related]
45. Automatic sleep staging of EEG signals: recent development, challenges, and future directions.
Phan H; Mikkelsen K
Physiol Meas; 2022 Apr; 43(4):. PubMed ID: 35320788
[TBL] [Abstract][Full Text] [Related]
46. Electrodermal activity patterns in sleep stages and their utility for sleep versus wake classification.
Herlan A; Ottenbacher J; Schneider J; Riemann D; Feige B
J Sleep Res; 2019 Apr; 28(2):e12694. PubMed ID: 29722079
[TBL] [Abstract][Full Text] [Related]
47. Benchmarking performance of an automatic polysomnography scoring system in a population with suspected sleep disorders.
Choo BP; Mok Y; Oh HC; Patanaik A; Kishan K; Awasthi A; Biju S; Bhattacharjee S; Poh Y; Wong HS
Front Neurol; 2023; 14():1123935. PubMed ID: 36873452
[TBL] [Abstract][Full Text] [Related]
48. Process and outcome for international reliability in sleep scoring.
Zhang X; Dong X; Kantelhardt JW; Li J; Zhao L; Garcia C; Glos M; Penzel T; Han F
Sleep Breath; 2015 Mar; 19(1):191-5. PubMed ID: 24801137
[TBL] [Abstract][Full Text] [Related]
49. Assessment of the suitability of using a forehead EEG electrode set and chin EMG electrodes for sleep staging in polysomnography.
Myllymaa S; Muraja-Murro A; Westeren-Punnonen S; Hukkanen T; Lappalainen R; Mervaala E; Töyräs J; Sipilä K; Myllymaa K
J Sleep Res; 2016 Dec; 25(6):636-645. PubMed ID: 27230805
[TBL] [Abstract][Full Text] [Related]
50. Sleep stage and obstructive apneaic epoch classification using single-lead ECG.
Yilmaz B; Asyali MH; Arikan E; Yetkin S; Ozgen F
Biomed Eng Online; 2010 Aug; 9():39. PubMed ID: 20723232
[TBL] [Abstract][Full Text] [Related]
51. It is All in the Wrist: Wearable Sleep Staging in a Clinical Population versus Reference Polysomnography.
Wulterkens BM; Fonseca P; Hermans LWA; Ross M; Cerny A; Anderer P; Long X; van Dijk JP; Vandenbussche N; Pillen S; van Gilst MM; Overeem S
Nat Sci Sleep; 2021; 13():885-897. PubMed ID: 34234595
[TBL] [Abstract][Full Text] [Related]
52. Multi-channel EEG-based sleep stage classification with joint collaborative representation and multiple kernel learning.
Shi J; Liu X; Li Y; Zhang Q; Li Y; Ying S
J Neurosci Methods; 2015 Oct; 254():94-101. PubMed ID: 26192325
[TBL] [Abstract][Full Text] [Related]
53. A novel, fast and efficient single-sensor automatic sleep-stage classification based on complementary cross-frequency coupling estimates.
Dimitriadis SI; Salis C; Linden D
Clin Neurophysiol; 2018 Apr; 129(4):815-828. PubMed ID: 29477981
[TBL] [Abstract][Full Text] [Related]
54. Minimizing Interrater Variability in Staging Sleep by Use of Computer-Derived Features.
Younes M; Hanly PJ
J Clin Sleep Med; 2016 Oct; 12(10):1347-1356. PubMed ID: 27448418
[TBL] [Abstract][Full Text] [Related]
55. Assessment of obstructive sleep apnea-related sleep fragmentation utilizing deep learning-based sleep staging from photoplethysmography.
Huttunen R; Leppänen T; Duce B; Oksenberg A; Myllymaa S; Töyräs J; Korkalainen H
Sleep; 2021 Oct; 44(10):. PubMed ID: 34089616
[TBL] [Abstract][Full Text] [Related]
56. A comparison of agreement between actigraphy and polysomnography for assessing sleep during posttraumatic amnesia.
Fedele B; McKenzie D; Williams G; Giles R; Olver J
J Clin Sleep Med; 2022 Nov; 18(11):2605-2616. PubMed ID: 35912692
[TBL] [Abstract][Full Text] [Related]
57. Sleep and wake classification with actigraphy and respiratory effort using dynamic warping.
Long X; Fonseca P; Foussier J; Haakma R; Aarts RM
IEEE J Biomed Health Inform; 2014 Jul; 18(4):1272-84. PubMed ID: 24108754
[TBL] [Abstract][Full Text] [Related]
58. Assessing sleep architecture and continuity measures through the analysis of heart rate and wrist movement recordings in healthy subjects: comparison with results based on polysomnography.
Muzet A; Werner S; Fuchs G; Roth T; Saoud JB; Viola AU; Schaffhauser JY; Luthringer R
Sleep Med; 2016 May; 21():47-56. PubMed ID: 27448472
[TBL] [Abstract][Full Text] [Related]
59. A New Sleep Staging System for Type III Sleep Studies Equipped With a Tracheal Sound Sensor.
Vanbuis J; Feuilloy M; Baffet G; Meslier N; Gagnadoux F; Girault JM
IEEE Trans Biomed Eng; 2022 Mar; 69(3):1225-1236. PubMed ID: 34665717
[TBL] [Abstract][Full Text] [Related]
60. Design and validation of a computer-based sleep-scoring algorithm.
Louis RP; Lee J; Stephenson R
J Neurosci Methods; 2004 Feb; 133(1-2):71-80. PubMed ID: 14757347
[TBL] [Abstract][Full Text] [Related]
[Previous] [Next] [New Search]