Integrating IoMT and AI for Proactive Healthcare: Predictive Models and Emotion Detection in Neurodegenerative Diseases
Abstract
:1. Introduction
2. Literature Review
2.1. Monitoring Neurodegenerative Diseases
- PD: (1) Motor symptoms: PD can cause a variety of motor symptoms, with the most common ones including: akinesia (paucity of movements and delayed initiation of movement), bradykinesia (slowness of movement), hypokinesia (reduced amplitude of movement), postural instability (impaired ability to recover balance), rigidity (increased resistance to passive joint movement), stooped posture (a forward-hunched posture), tremor at rest (involuntary shaking, typically starting in the hands or fingers when the muscles are relaxed) [2,5]. Postural instability, bradykinesia, stiffness, and tremors are the main symptoms. Wearables containing accelerometers are example technologies that can continuously track these motor signs [6]. Other movement disorders appear in patients with PD during the night [7], including nocturnal hypokinesia or akinesia, restless legs syndrome, periodic limb movement in sleep, among other abnormal movements during sleep; (2) Gait analysis: Patients with PD frequently have irregular gaits, which can be tracked by sensors worn on the body or placed in shoes [8]; (3) Speech analysis: Using microphones and voice analysis algorithms, voice alterations, such as reduced volume and pitch and rushed and slurred speech, can be observed [9]; (4) Non-motor symptoms: Sleep trackers, cognitive tests, and mood assessment apps can be used to monitor sleep disorders, cognitive deterioration, and mood swings [10]. Sleep disorders (SD) are some of the most common non-motor symptoms of PD [7]. SDs may be caused or worsened by PD related motor issues that occur during sleep, as abnormal movement events related to PD, such as akinesia, rigidity and dystonia, occur during sleep as well. PD affects primarily motor functions with mental decline generally appearing in later stages and the cognitive issues are more related to slowed thinking with memory loss problems appearing later in the progress of the disease [8].
- AD: (1) Cognitive function: Cognitive decline is usually the primary symptom of AD, with memory loss being one of the first noticeable symptoms [8]. Frequent cognitive assessments utilizing digital platforms can estimate cognitive impairments to gauge their degree and evolution over time, serving as screening assessments [11]; (2) Daily activity monitoring: Wearable technology and smart home devices can keep an eye on daily routines to spot any irregularities that can point to cognitive deterioration [12]; (3) Sleep patterns: Sleep-related health data (such as body movements, cardiac rhythm, respiration rate, snoring, discontinuances in the breathing episodes, etc.) is necessary in order to have an overview of the sleep quality, and patterns can be tracked using wearables to detect sleep disturbances common in AD [11]. Insufficient sleep is a risk factor for AD and AD leads to sleep deprivation and disruptions [13]; (4) Movement disorders: Although AD manifestations are typically related to cognitive functions, rigidity, slowness, and other movement disorders are common [14].
- MS: (1) Neurological function: Regular and comprehensive assessment of cognitive and motor functions utilizing digital platforms can help managing the symptoms [15]; (2) Mobility and balance: Mobility issues are also common in the majority of MS patients for whom decreased motor control, muscle weakness, balance problems, spasticity, fatigue and ataxia may lead to inability to walk long distances, impaired gait pattern, inability to support body weight [16,17], problems which may lead to complete inability to walk, either permanent or during relapses. Monitoring balance, coordination, and gait aids in determining the MS progression [18]; (3) Muscle strength and spasticity: Assessing the strength and tone of the muscles [18]; (4) Sensory changes: monitoring for numbness, tingling, and pain [19]; (5) Fatigue levels: Assessing the degree and influence of fatigue [20]; (6) Speech and swallowing: Evaluating speech and swallowing difficulties [21]; and (7) Sleep analysis: Poor sleep may affect daytime activities as it leads to daytime fatigue. Fatigue (both mental and physical) is a known problem directly linked to the condition [17].
2.2. Predictive Modeling for Neurodegenerative Diseases
- Time series analysis: These models analyze time series data from IoMT devices to forecast future health states [42];
- ML models: Supervised and unsupervised learning techniques are used to develop models that can predict the onset or progression of neurodegenerative diseases based on historical data and real-time monitoring. Deep Learning Techniques and neural networks are utilized to examine intricate patterns in huge datasets, increasing prediction accuracy. Convolutional neural networks (CNN) and VGG16 models have been used for predicting AD from MRI images and PD from spiral drawings with high accuracy [43]. Recurrent neural networks (RNNs), convolutional neural networks (CNNs), and transformer-based models have been used for building different predictive models. These techniques exhibit excellent accuracy, have the potential for early diagnosis, and improve patient outcomes [43,44];
- Multimodal data integration: Prediction accuracy is increased by combining data from multiple sources such as genetic information, medical records, and wearable technology. To forecast the course of a disease and comprehend biological trends in neurodegenerative disorders, data-driven models of disease progression incorporate multiple sources, for example imaging and cognitive testing. These models allow for accurate patient staging and offer fine-grained longitudinal patterns [41].
2.3. Voice Analysis for Emotion Detection in Neurodegenerative Diseases
- Monitoring emotional health: AD, PD, and MS patients should have their emotional health regularly assessed because it has a significant impact on their overall quality of life [46];
- Early detection of emotional changes: Recognizing the early warning indicators of emotional disorders, such as anxiety and depression, which are widespread in neurodegenerative illnesses;
- Personalized interventions: Delivering prompt, individualized emotional support in response to discerned shifts in emotional states.
3. Methods
3.1. The NeuroPredict Platform
3.1.1. Overview
3.1.2. The Architecture of the NeuroPredict Platform
- The Device Layer
- IoMT devices for health monitoring regularly track health parameters including heart rate, blood pressure, EKG data, and sleep patterns. They provide accurate information on health status like cardiovascular health and neurological markers, which are critical for the early identification and continuous management of neurodegenerative diseases;
- Ambient sensors monitor living conditions related factors, such as temperature, humidity, air quality, and light levels. This information about the environment contributes to an improved awareness of how living conditions at home affect health outcomes, hence promoting proactive health management;
- Built-in health applications improve patient engagement by allowing self-reported input of information, medication adherence tracking, symptom reporting, and contact with healthcare providers. These applications enable increased involvement from patients and help to build an extensive set of data for AI-driven analytics.
- Communication layer
- Secure data transmission makes use of strong protocols for encryption for securely transmitting data from IoMT devices to the cloud infrastructure. This preserves the confidentiality and accuracy of patient data throughout transmission and storage;
- Interoperability that is in line with the interoperability standards, allowing for effortless integration with current healthcare systems and electronic health records (EHRs). This interoperability facilitates data interchange across multiple infrastructures, improving coordinated care and consistency.
- Cloud-based AI analytics layer
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- Data storage and management manages various datasets, such as medical records, IoMT device outputs, cognitive assessments, and open databases. This centralized process facilitates longitudinal data analysis while ensuring a comprehensive patient profile;
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- AI-driven analytics uses advanced algorithms to generate meaningful insights from multidimensional datasets. ML models analyze previous information to identify patterns, forecast disease progression, and enhance customized treatment approaches for neurodegenerative patients. By constantly acquiring knowledge from newly collected inputs, the NeuroPredict platform strengthens its predictive feature and reacts to changing requirements from patients;
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- Predictive modeling creates tailored predictive models by combining real-time IoMT data with clinical insights and cognitive assessments. These models allow for early identification of illness worsening, proactive management alternatives, and ongoing monitoring of patient health status.
- Application Layer
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- Easy-to-use dashboards and decision-support tools for healthcare practitioners: these tools turn intricate data into meaningful recommendations, enabling more informed clinical decisions and tailored patient care.
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- Patient engagement applications support patients in taking an active role in the healthcare process by providing customized health insights, real-time feedback on health measurements, and educational tools. These applications enhance patient empowerment, compliance with medical care, and lifestyle changes that are necessary for properly managing PD, AD, and MS.
3.1.3. NeuroPredict Smart Environment and IoMT Devices
- Commercially available devices
- The Withings Blood Pressure Monitor Core [67]
- The Withings Move ECG [68] smartwatch
- Withings ScanWatch [69]
- The Withings Body+ [70]
- The Withings Body Scan [71]
- The Withings Sleep Analyzer [72]
- The Withings Thermo [74]
- Fitbit Charge 5 [75]
- Oura Smart Ring [76]
- EEG Muse Headband [77]
- 2.
- In-house-built devices
- The Medical BlackBox:
- The Ambiental BlackBox
- The GaitBand
- 3.
- Manually input health data forms
3.1.4. Medical Monitoring and Evaluation Functionalities in the NeuroPredict Platform
- Cognitive function assessment
- Motor symptoms monitoring
- Sleep monitoring
- Daily activities monitoring
- Emotional state monitoring
- Speech and language abilities monitoring
- General health status assessment
- Environmental monitoring
3.2. Emotion Detection Based on Voice Features
3.2.1. Descriptions of Datasets
- Data upload: All data from the different datasets is stored in a data frame with its specific label. A key differentiator from other work is that our algorithm utilizes data from four different emotion datasets to develop a model that generalizes well to new data.
- Data relabeling: The dataset is refined by removing entries labeled with the “Disgust” emotion. The remaining labels are then consolidated: “Calm”- and “Neutral”-labeled data are relabeled as “Neutral”; “Angry, “Fear”, and “Sad” are relabeled as “Negative”; and “Happy” and “Surprise/Positive Surprise” are relabeled as “Positive”. The relabeling process is presented in Table 5.
- Data augmentation: To improve the diversity of the data the following augmentation techniques are used:
- Noise addition: A random noise is generated and added to the audio signal. This aids in making the model robust to background noises and other distortions (Figure 3b).
- Stretching: The audio signal is stretched at a rate of 0,8 (Figure 3c). This changes the duration of the signal without altering features, like pitch, and, as an effect, the playback speed is increased by 25%. This way, the model will learn to work on signals with different variations in speed.
- Shifting: The audio signal is randomly shifted in time with a shift range randomly calculated between -5000 and 5000 samples. The purpose of this step is to make the model robust to time-based distortions (Figure 3d).
- Pitch shifting: A pitch shift of 0.7 musical steps is applied on the initial signal. This alters the frequency content but preserves the overall structure of the signal and helps the model to generalize better to pitch variations (Figure 3e).
3.2.2. Data Processing and Feature Extraction
- Mel frequency cepstral coefficients (MFCCs): MFCCs are a set of coefficients that describe the shape of the power spectrum of a sound signal. The raw audio signal is transformed into the frequency domain using a discrete Fourier transform (DFT) and then the Mel scale is applied to approximate the human auditory perception of sound frequency. Cepstral coefficients are computed from the Mel-scaled spectrum using a discrete cosine transform. The first 20 MFCCs are used in the current work and included in the feature vector.
- Mel spectrograms extracted features: A Mel spectrogram represents the short-term power spectrum of a sound, with the frequencies converted to the Mel scale. The intensity of various frequency components in the audio signal can be extracted from this spectrogram. 128 features are extracted from each computed Mel spectrogram and included in the feature vector.
- 3.
- Chroma-STFT (short-time Fourier transform): There are 12 Chroma-STFT features, representing the 12 different musical pitch classes of the signal. They represent spectral energy and are useful in capturing harmonic and melodic characteristics of the signal. They can also be employed in differentiating the pitch class profiles between audio signals [83].
- 4.
- Chroma deviation: Chroma deviation measures the standard deviation of the Chroma features over time, indicating the variability of the pitch.
- 5.
- Zero crossing rate (ZCR): ZCR is defined as the rate at which a signal changes from positive to zero to negative, or vice versa. It serves as a crucial feature in identifying short and sharp sounds, effectively pinpointing minor fluctuations in signal amplitude. The count of zero crossings serves as an indicator of the frequency at which energy is concentrated within the signal spectrum [84].
- 6.
- Root mean square (RMS): RMS refers to the average loudness of the signal, taking into account the energy of the wave. The steps to compute the RMS of an audio frame are: computing the square of each sample of the signal, calculate the mean of those squared values and finally take the square root of the mean value.
- 7.
- Spectral centroid: Spectral centroid indicates the “center of mass” of the spectrum and measures where the energy of the spectrum is concentrated. It is used for timbre analysis. It is computed as the weighted mean of the frequencies present in the signal.
- 8.
- Spectral spread: Spectral spread indicates the dispersion of the spectrum around the spectral centroid, providing information about the bandwidth of the signal.
- 9.
- Spectral entropy: Spectral entropy quantifies the complexity or randomness of the spectrum.
- 10.
- Spectral flux: Spectral flux is used as a measurement of the rate of change of the power spectrum, indicating how quickly the spectrum is changing over time.
- 11.
- Spectral rolloff: Spectral rolloff describes the frequency below which a certain percentage of the total spectral energy is contained. The percentage chosen for computations in current work is 90%.
3.2.3. Model Architecture
- Convolutional layers
- Long short-term memory (LSTM) layers/bidirectional LSTM layers
- Gated recurrent unit (GRU) layers
- Batch normalization layers
- Different activation functions: rectified linear unit (ReLU) and leaky ReLU.
- Data preparation: The dataset is split in training (80%) and testing (20%) sets.
- Building the classification model: The architecture for the classification model is created.
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- Recall is the ratio of correctly identified negative instances. This metric complements sensitivity and is important for evaluating how well the algorithm avoids false alarms, which is calculated as follows:
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- F1 Score is the harmonic mean of precision and sensitivity, calculated as follows:
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- Accuracy is a general measure of performance that numerically represents the ratio of correct predictions to the total predictions made, which is calculated as follows:
4. Results
4.1. Comparison with Other Approaches
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- Models based on each of the initial datasets: models built and tested only on Ravdess, only on Tess, only on Crema-D, and only on Savee.
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- Models based on each of the initial datasets that use the original labeling (with the original number of classes) from each dataset and models based on each dataset using the new labeling and data aggregation for obtaining the targeted three classes: positive, neutral, and negative emotions. No work has been found in the studied literature for the aggregated three classes. As presented in Table 6 and Table 7, the performances of the models are better when only targeting the three major classes, as the algorithm does not have to distinguish between different types of negative emotions or different types of positive emotions.
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- Models using 1D CNN with and without batch normalization and varying the number of hidden layers and the number of fully connected layers;
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- Models using a CNN architecture with two bidirectional LSTM layers with batch normalization;
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- Models using a CNN architecture with two GRU layers with batch normalizations.
4.2. Performances of the Built Model for Emotion Recognition Based on Voice Features
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- Four convolutional blocks: each of them contains a convolutional layer, batch normalization that normalizes activations of the previous layers to improve training, and max-pooling to reduce the spatial dimension.
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- Two bidirectional LSTM layers: with a dropout rate of 0.3 to prevent overfitting.
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- Two fully connected layers: the first one also performs batch normalization, and the second one outputs the classification results.
4.3. Algorithm Integration in the NeuroPredict Platform
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Previous Work | Dataset Used | Best Average Accuracy [%] | Classification Algorithm Basis | Features | Year |
---|---|---|---|---|---|
[57] | EMO-DB1 | 95.71 | 1D CNN | MFCCs, chromagram, spectrograms, Tonnetz representation, spectral contrast features | 2020 |
EMO-DB2 | 86.1 | ||||
RAVDESS | 71.61 | ||||
IEMOCAP | 64.3 | ||||
[56] | EMO-DB | 90.50 | Deep CNN for feature extraction + CFS + SVM/MLP | Deep CNN for feature extraction | 2020 |
SAVEE | 66.90 | ||||
IEMOCAP | 76.60 | ||||
RAVDESS | 73.50 | ||||
[58] | TESS | 97.1 | 1D CNN | 40 MFCCs | 2022 |
RAVDESS | 72.2 | ||||
[61] | RAVDESS | 82.31 | Parallelized CNNs + transformer (CTENet) | MFCCs-based features | 2023 |
IEMOCAP | 79.42 | ||||
[62] | SAVEE | 74.00 | LSTM-Based Network with Attention Mechanism | MFCCs | 2023 |
RAVDESS | 77.00 | ||||
[60] | Crema-D | 82.96 | Transformer based | Patches from spectrograms | 2023 |
[63] | Ravdess | 84.1 | Masked autoencoder | Spectrograms derived features using vector quantization | 2023 |
IEMOCAP | 66.4 | ||||
EMODB | 90.2 | ||||
[64] | IEMOCAP | 73.26 | Linear classifier | MFCCs, transformer-based features, spectrograms | 2024 |
Disease | Functionality |
---|---|
Alzheimer’s disease (AD) | Daily activities tracking |
Location tracking and safety | |
Cognitive function evaluation | |
Sleep quality assessment | |
Behavior and mood monitoring | |
Electrical brain activity monitoring | |
Voice processing for speech and language changes | |
Parkinson’s disease (PD) | Abnormal movement monitoring |
Posture and balance assessment | |
Cognitive function evaluation | |
Electrical brain activity monitoring | |
Daily activities tracking | |
Physical activities tracking | |
Polysomnography | |
Voice processing for speech changes | |
Reaction time analysis | |
Multiple sclerosis (MS) | Mobility changes monitoring |
Physical activity tracking | |
Respiratory function evaluation | |
Muscle function assessment | |
Bladder function assessment | |
Cognitive function evaluation | |
Voice processing for speech clarity |
Category | Functionality | Modality/ Available Devices |
---|---|---|
Motor functions Monitoring | Abnormal movement (+abnormal movements during sleep) | Accelerometer + Gyroscope/ Gaitband |
Posture analysis | GPS and GSM-based devices/ GaitBand, Fitbit Charge 5 | |
Gait analysis | Accelerometer + Gyroscope/ Gaitband | |
Fall detection | Multimodal assessment/ Accelerometer + Gyroscope/ Gaitband | |
Mobility symptoms logs | User reported mobility issues through predefined input forms in the platform | |
Cognitive functions monitoring | Form-based testing integrated into the NeuroPredict platform | Neuropsychological tests/ Form-based testing integrated into the NeuroPredict platform |
Reaction time analysis | Application/ Stimulus–response testing setup integrated into the NeuroPredict platform | |
Electrical brain activity monitoring | EEG cap/ EEG Muse Headband | |
Cognitive issues logs | User reported cognitive issues through predefined input forms in the platform | |
Sleep monitoring | Sleep quality assessment through polysomnography | Multimodal assessment: cardiac activity sensor, accelerometer, GPS, EEG cap/ Oura Smart Ring, Fitbit Charge 5, Withings ECG Move, EEG Muse Headband |
Sleep disorders assessments through standardized tests | User reported SD issues through predefined input forms in the platform | |
Voice processing for speech clarity | Microphone/ Integrated into a smartphone or a laptop | |
Daily activities monitoring | Daily activities identification | Multimodal assessment: Accelerometer, ambient PIR, GPS, Cardiac activity tracker/ Fitbit Charge 5, Withings ECG Move, Gaitband, Ambiental BlackBox |
Physical activities identification | Multimodal assessment: Accelerometer, ambient PIR, GPS, Cardiac activity tracker/ Fitbit Charge 5, Withings ECG Move, Gaitband, Ambiental BlackBox | |
Daily activities issues logs | User/caregiver reported issues in performing daily activities through predefined input forms in the platform | |
Emotional state monitoring | Voice processing | Microphone/ Integrated into a smartphone or a laptop |
Physical parameters monitoring for emotional state identification | Multimodal assessment: Heart rate, electrodermal activity, body temperature/ Oura Smart Ring, Gitbit Charge 5, Withings ECG Move, Muse EEG headband | |
Emotional state logs | User reported emotional state through predefined input form in the platform | |
Speech and language abilities | Voice processing for language changes | Microphone/ Integrated into a smartphone or a laptop |
Voice processing for speech clarity | Microphone/ Integrated into a smartphone or a laptop | |
Voice processing for speech changes | Microphone/ Integrated into a smartphone or a laptop | |
General health monitoring | Heart monitoring | |
Respiratory function evaluation | Spirometer, pulse plethysmography (PPG)/ Fitbit Charge 5 | |
Muscle function assessment | Electromyography (EMG)/ MySignals EMG | |
Bladder function assessment | UV–VIS spectroscopy/ Integrated into the Medical BlackBox | |
General health issues logs | User reported issues through predefined input forms in the platform |
Dataset | Speakers | Emotions | Format | Recordings | Recording Conditions | Language |
---|---|---|---|---|---|---|
SAVEE | Four (Four male) | Seven emotions: angry, disgust, fear, happy, neutral, sad, and surprise | wav | 480 | Controlled environment | English |
RAVDESS | 24 (12 male, 12 female) | Eight emotions: neutral, calm, happy, sad, angry, fearful, disgust, and surprised | wav | 1440 | Controlled environment | English |
TESS | Two (two female) | Seven emotions: angry, disgust, fear, happy, neutral, pleasant surprise, and sad | wav | 2800 | Controlled environment | English |
CREMA-D | 91 (48 male, 43 female) | Six emotions: anger, disgust, fear, happy, neutral, and sad | wav | 7442 | Controlled environment | English |
Combined dataset—eight classes | 121 (64 male, 57 female) | Eight emotions: happy, surprise, disgust, calm, angry, fear, sad, and neutral | wav | 12,162 | Mixed controlled environments | English |
Combined dataset—three classes | 121 (64 male, 57 female) | Three emotions: positive, neutral, negative | wav | 10,239 | Mixed controlled environments | English |
Emotions | Number of Records | Class | Number of Records |
---|---|---|---|
Disgust | 1923 | - | discarded |
Happy | 1923 | Positive | 2575 |
Surprise/ Positive surprise | 652 | ||
Angry | 1923 | Negative | 5769 |
Fear | 1923 | ||
Sad | 1923 | ||
Calm | 192 | Neutral | 1895 |
Neutral | 1703 |
Dataset | Number of Classes | Best Performance in the Studied Literature (Average Accuracy [%]) | Best Achieved Performance in Current Work (Average Accuracy [%]) | Description of the Classification Approach (a) In the Literature (b) In Our Work |
---|---|---|---|---|
SAVEE | 7 | 74% [62] | 78.81% | (a) LSTM-based network with attention mechanism; (b) 1D CNN with four convolutional layers and one fully connected layer, without batch normalization. |
3 | - | 85.71% | (a) No similar work has been found; (b) 1D CNN with four convolutional layers, two GRU layers, batch normalization after each layer, and one fully connected layer. | |
RAVDESS | 8 | 84.1% [63] | 79.62% | (a) Masked autoencoder; (b) 1D CNN with four convolutional layers and one fully connected layer, without batch normalization. |
3 | - | 83.97% | (a) No similar work has been found; (b) 1D CNN with four convolutional layers, two GRU layers, with batch normalization after each layer, and one fully connected layer. | |
TESS | 7 | 97.1% [58] | 99.58% | (a) 1D CNN; (b) 1D CNN with four convolutional layers and one fully connected layer, with batch normalization after each layer. |
3 | - | 99.65% | (a) No similar work has been found; (b) CNN LSTM with four convolutional layers, two bidirectional LSTM layers, with batch normalization after each layer, and one fully connected layer. | |
CREMA-D | 6 | 82.96% [60] | 69.18% | (a) Transformer based; (b) 1D CNN with four convolutional layers and one fully connected layer, with batch normalization after each layer. |
3 | - | 74.64% | (a) No similar work has been found; (b) 1D CNN with four convolutional layers, two GRU layers, with batch normalization after each layer, and one fully connected layer. |
Dataset | Emotions | Best Performance (Average Accuracy [%]) | Description of the Model Architecture and Parameters for Best Result |
---|---|---|---|
Aggregated dataset | Seven emotions | 71.77% | 1D CNN with four convolutional layers and one fully connected layer, with batch normalization. |
Three emotions | 82.38% | CNN LSTM with four convolutional layers, two bidirectional LSTM layers and two fully connected layers, with batch normalization. |
Precision | Recall | F1 Score | ||
---|---|---|---|---|
Class | Positive | 83.85 | 75.86 | 79.56 |
Negative | 84.41 | 88.34 | 86.33 | |
Neutral | 74.21 | 73.44 | 73.82 | |
Macro average | 80.82 | 79.15 | 79.90 | |
Weighted average | 82.35 | 82.38 | 82.29 | |
Overall accuracy | 82.38 |
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Share and Cite
Sandulescu, V.; Ianculescu, M.; Valeanu, L.; Alexandru, A. Integrating IoMT and AI for Proactive Healthcare: Predictive Models and Emotion Detection in Neurodegenerative Diseases. Algorithms 2024, 17, 376. https://doi.org/10.3390/a17090376
Sandulescu V, Ianculescu M, Valeanu L, Alexandru A. Integrating IoMT and AI for Proactive Healthcare: Predictive Models and Emotion Detection in Neurodegenerative Diseases. Algorithms. 2024; 17(9):376. https://doi.org/10.3390/a17090376
Chicago/Turabian StyleSandulescu, Virginia, Marilena Ianculescu, Liudmila Valeanu, and Adriana Alexandru. 2024. "Integrating IoMT and AI for Proactive Healthcare: Predictive Models and Emotion Detection in Neurodegenerative Diseases" Algorithms 17, no. 9: 376. https://doi.org/10.3390/a17090376
APA StyleSandulescu, V., Ianculescu, M., Valeanu, L., & Alexandru, A. (2024). Integrating IoMT and AI for Proactive Healthcare: Predictive Models and Emotion Detection in Neurodegenerative Diseases. Algorithms, 17(9), 376. https://doi.org/10.3390/a17090376