| Literature DB >> 31726771 |
Sheikh Shanawaz Mostafa1,2, Fábio Mendonça1,2, Antonio G Ravelo-García3, Fernando Morgado-Dias4.
Abstract
Sleep apnea is a sleep related disorder that significantly affects the population. Polysomnography, the gold standard, is expensive, inaccessible, uncomfortable and an expert technician is needed to score. Numerous researchers have proposed and implemented automatic scoring processes to address these issues, based on fewer sensors and automatic classification algorithms. Deep learning is gaining higher interest due to database availability, newly developed techniques, the possibility of producing machine created features and higher computing power that allows the algorithms to achieve better performance than the shallow classifiers. Therefore, the sleep apnea research has currently gained significant interest in deep learning. The goal of this work is to analyze the published research in the last decade, providing an answer to the research questions such as how to implement the different deep networks, what kind of pre-processing or feature extraction is needed, and the advantages and disadvantages of different kinds of networks. The employed signals, sensors, databases and implementation challenges were also considered. A systematic search was conducted on five indexing services from 2008-2018. A total of 255 papers were found and 21 were selected by considering the inclusion and exclusion criteria, using the preferred reporting items for systematic reviews and meta-analyses (PRISMA) approach.Entities:
Keywords: CNN; RNN; deep learning; deep neural network; sensors for sleep apnea; sleep apnea
Mesh:
Year: 2019 PMID: 31726771 PMCID: PMC6891618 DOI: 10.3390/s19224934
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Flow chart of the process for article selection using preferred reporting items for systematic reviews and meta-analyses (PRISMA) reporting style.
Figure 2Word cloud of titles of selected papers (a) original titles and (b) modified titles. All the letters are presented in lowercase.
Figure 3Word cloud of keywords of selected papers (a) original keywords and (b) modified keywords. All the letters are presented in lowercase.
Summary of the database information: The database, year of publication, number of subjects, used signals, window size and type of classifiers (A = apnea, H = hypopnea, N = normal, S = severity, O = obstructive, G = global or obstructive sleep apnea (OSA) severity) used by selected papers (according to year).
| Paper | Year | Database | Recordings | Sensors/Signals | Window Size (Seconds) | Classification Type |
|---|---|---|---|---|---|---|
| [ | 2008 | Apnea-ECG Database (AED) [ | 70 | [Heart rate variability (HRV)- electrocardiogram (ECG)] | 60 | A/N |
| [ | 2017 | Multi-Ethnic Study of Atherosclerosis (MESA) | 100 | [Nasal airflow] | 30 | OA/N |
| [ | 2017 | AED [ | 8 | [Blood oxygen saturation index (SpO2)] | 60 | OA/N |
| University College Dublin Sleep Apnea Database (UCD) [ | 25 | [SpO2] | 60 | A/N | ||
| [ | 2017 | AED [ | 35 | [Instantaneous heart rates (IHR)-ECG] | 60 | G |
| [ | 2017 | AED [ | 35 | [IHR-ECG] | 60 | OA/N, G |
| AED [ | 8 | [SpO2] | 60 | OA/N, G | ||
| [ | 2017 | AED [ | 35 | [ECG inter-beat intervals (RR-ECG)] | - | OA/N |
| [ | 2018 | AED [ | 35 | [ECG] | 60 | OA/N |
| [ | 2018 | MESA [ | 1507 | [Nasal airflow] | 30 | A/H/N |
| [ | 2018 | Seoul National University Bundang Hospital (SNUBH) [ | 120 | [Breathing sounds] | 5 | G |
| [ | 2018 | Sleep Center of Samsung Medical Center, Seoul, Korea (SCSMC82) [ | 82 | [ECG] | 10 | OA/N |
| [ | 2018 | UCD [ | 23 | [SpO2, oronasal airflow, and ribcage and abdomen movements] | 1 | OAH/N |
| [ | 2018 | MESA [ | 1507 | [Nasal airflow, Abdominal and thoracic plethysmography] | 30 | OA/H/N |
| [ | 2018 | AED [ | 35 | [HRV ECG] | 60 | OA/N |
| [ | 2018 | Seoul National University Hospital (SNUH) [ | 179 | [Nasal pressure] | 10 | AH/N, G |
| MESA [ | 50 | [Nasal pressure] | 10 | AH/N, G | ||
| [ | 2018 | Osteoporotic Fractures in Men Study (MrOS) (Visit 1) [ | 545 | [ECG] | 15 | G |
| [ | 2018 | MrOS (Visit 2) [ | 520 | [Airflow] | - | G |
| [ | 2018 | Massachusetts General Hospital (MGH) | 10 000 | [Airflow, respiration (chest and abdomen belts), SpO2] | 1 | G |
| Sleep Heart Health Study (SHHS) [ | 5804 | [Airflow, respiration (chest and abdomen belts), SpO2] | 1 | G | ||
| [ | 2018 | SHHS-1 [ | 2100 | [Respiratory signals (chest and abdomen belts), ECG derived respiration (EDR)] | 30 | A/N |
| [ | 2018 | SCSMC86 [ | 86 | [ECG] | 10 | OA/H/N |
| [ | 2018 | SCSMC92 | 92 | [ECG] | 10 | A/H/N, AH/N |
| [ | 2018 | AED [ | 70 | [RR–ECG] | 60 | OAH/N, G |
Performance of the different works.
| Paper | Classifier Type | Sen/Recall (%) | Spc (%) | Acc (%) | Others |
|---|---|---|---|---|---|
| [ | Multiple hidden layers neural network (MHLNN) (Apnea Hypopnea Index, AHI 5) | 80.47 (G) | 86.35 (G) | 83.46 (G) | - |
| MHLNN (AHI 15) | 85.56 (G) | 86.96 (G) | 85.39 (G) | - | |
| MHLNN (AHI 30) | 93.06 (G) | 90.23 (G) | 92.69 (G) | - | |
| [ | MHLNN | - | - | 68.37 | - |
| [ | MHLNN | - | - | 75 (G) | - |
| [ | Stacked autoencoder (SAE) | 88.9 | 88.4 | 83.8 | Area under the receiver operating characteristic curve (AUC) 0.86.9 |
| SAE | 100 (G) | 100 (G) | 100 (G) | ||
| [ | Deep belief networks (DBN), (UCD) | 60.36 | 91.71 | 85.26 | Combined objective (CO) 79.1 |
| DBN (AED) | 78.75 | 95.89 | 97.64 | - | |
| [ | Convolution neural network (CNN)1D | 87 | 87 | 90.8 | Positive predictive value, |
| [ | CNN1D | 96 | 96 | 96 | |
| [ | CNN1D | 97.82 | 99.20 | 98.91 | PPV 99.06%, negative predictive value (NPV) 98.14% |
| [ | CNN1D | 81.1 | 98.5 | 96.6 | PPV 87%, NPV 97.7% |
| CNN1D (AHI 5) | 100 (G) | 84.6 (G) | 96.2 (G) | PPV 95.1%, NPV 100%, | |
| CNN1D (AHI 15) | 98.1 (G) | 86.5 (G) | 92.3 (G) | PPV 87.9%, NPV 97.8%, | |
| CNN1D (AHI 30) | 96.2 (G) | 96.2 (G) | 96.2 (G) | PPV 89.3%, NPV 98.7%, | |
| [ | CNN1D | 74.70 | - | 74.70 | PPV 74.50% |
| [ | CNN1D-3ch | 83.4 | - | 83.5 | PPV 83.4%, |
| [ | CNN1D | 77.6 | - | 77.6 | PPV 77.4%, |
| CNN2D | 79.7 | - | 79.8 | PPV 79.8%, | |
| [ | CNN2D | - | 79.6 | - | |
| [ | Long short-term memory (LSTM), (SpO2) | 92.9 | - | 95.5 | AUC 0.98, PPV 99.2% |
| LSTM (IHR) | 99.4 | - | 89.0 | AUC 0.99%, PPV 82.4% | |
| LSTM (SpO2 + IHR) | 84.7 | - | 92.1 | AUC 0.99%, PPV 99.5% | |
| LSTM (IHR) | 99.4 (G) | ||||
| [ | LSTM (IHR) | - | - | 100 (G) | |
| [ | LSTM | - | - | 97.08 | - |
| [ | FLSTM | 85.5 | 80.1 | 82.1 | - |
| [ | FLSTM (abdores) | 57.9 | 73.9 | 71.1 | AUC 71.5, PPV 33.0% |
| LSTM (abdores) | 62.3 | 80.3 | 77.2 | AUC 77.5, PPV 39.9% | |
| FLSTM (thorres) | 62.9 | 77.2 | 74.7 | AUC 76.9, PPV 36.8% | |
| LSTM (thorres) | 67.8 | 76.5 | 75 | AUC 79.7, PPV 37.7% | |
| FLSTM (EDR) | 48.8 | 60.8 | 58.7 | AUC 57.6, PPV 21.1% | |
| LSTM (EDR) | 52.1 | 61.8 | 60.1 | AUC 58.8, PPV 22.1% | |
| [ | LSTM | 98 | 98 | 98.5 | |
| Gated recurrent unit (GRU) | 99 | 99 | 99.0 | ||
| [ | Recurrent and convolutional neural networks (RCNN), (MGH) | - | - | 88.2 (G) | - |
| [ | CNN1D-LSTM- MHLNN | 77.60 (G) | 80.10 (G) | 79.45 (G) |
* The authors used an alternative definition of true positive (detection of normal events) compared with the definition provided by Baratloo et al. [88]. Therefore, in this table for binary classifier comparing with other authors their Sen could be treated as Spc and vice versa. If nothing is indicated in the paper, then an assumption was made that the authors did use the definition provided in Baratloo et al.
Abbreviations and Acronyms used in this work. (according to alphabetic order Top- Bottom, Left-Right).
| Abbreviation and Acronyms | Full Form | Abbreviation and Acronyms | Full Form |
|---|---|---|---|
| AASM | American Academy of Sleep Medicine | LSTM | Long Short-Term Memory |
| Acc | Accuracy | maxpooling | Maximum Pooling |
| AE | Autoencoder | MESA | Multi-Ethnic Study of Atherosclerosis |
| AED | Apnea-ECG database | MGH | Massachusetts General Hospital |
| AF | Air Flow | MHLNN | Multiple hidden layers neural network |
| AHI | Apnea hyperpnea Index | mRMR | Minimum Redundancy Maximum Relevance |
| ANN | Artificial Neural Network | MrOS | Osteoporotic Fractures in Men Study |
| AUC | Area under ROC curve | NPV | Negative Predictive Value |
| bpm | Beats Per Minutes | NSRR | National Sleep Research Resource |
| CNN | Convolution Neural Network | OSA | Obstructive Sleep Apnea |
| CO | Combined Objective | OSAH | Obstructive Sleep Apnea Hypopnea |
| CWT | Continuous Wavelet Transform | SpO2 | Blood Oxygen Saturation Index |
| DAE | Deep Autoencoder | Spc | Specificity |
| DBN | Deep Belief Network | PPV | Precision or Positive Predictive Value |
| DL | Deep Learning | PSG | Polysomnography |
| DNN | Deep Neural Network | RBM | Restricted Boltzmann Machines |
| DVNN | Deep Vanilla Neural Network | RCNN | Combined Deep Recurrent and Convolutional Neural Networks |
| EA | Evolutionary Algorithms | ReLU | Rectified Linear Unit |
| ECG | Electrocardiography | RF | Random Forest |
| EDR | ECG derived respiration | RNN | recurrent neural network |
| EEG | Electroencephalogram | RR-ECG | R to R interval from ECG |
| EMG | Electromyography | SAE | Stacked Autoencoder |
| EOG | Electrooculogram | SCSMC | Sleep Center of Samsung Medical Center |
|
| Sen | Recall or Sensitivity | |
|
| Weighted | SFS | Sequential Forward Selection |
| FP | False Positive | SHHS | Sleep Heart Health Study |
| FLSTM | LSTM with feature inputs | SNUBH | Seoul National University Bundang Hospital |
| GA | Genetic Algorithm | SNUH | Seoul National University Hospital |
| HRV | Heart Rate Variability | SpAE | Sparse Autoencoder |
| Hz | Hertz | Spc | Specificity |
| IHR | Instantaneous Heart Rates | SVM | Support Vector Machine |
| IIR | Infinite Impulse Response | TN | True Negative |
| kNN | k-nearest neighbor | TP | True Positive |
| LDA | Linear Discriminant Analysis | UCD | St. Vincent’s University Hospital/University College Dublin Sleep Apnea Database |
| LR | Logistic Regression |