Paroxysmal diseases are characterized by sudden, episodic conditions that cause temporary changes in the body. Among them, epilepsy stands out for causing synchronous and uncontrolled neuronal discharges, resulting in recurrent and unprovoked seizures. These seizures may involve a loss or change in level of consciousness, abnormal movements or psychological symptoms. Other conditions, such as migraines, sleep disorders, and psychogenic non-epileptic seizures, may present similar symptoms but originate from different mechanisms and generally do not present abnormalities in brain activity.
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FACILITATING EPILEPSY DIAGNOSIS WITH A WIRELESS AND WEARABLE EEG SYSTEM
Publication type: Article Summary
Original title: Wireless and Wearable EEG Acquisition Platform for Ambulatory Monitoring
Article publication date: May 2014
Source: ResearchGate
Authors: Francisco Pinho, José Higino Correia, Nuno Sousa, João José Cerqueira & Nuno Sérgio Dias
What is the goal, target audience, and areas of digital health it addresses?
This research aims to develop a wearable wireless system for the acquisition of electroencephalogram (EEG) signals, allowing prolonged ambulatory monitoring of epilepsy. The target audience includes individuals with epilepsy or other paroxysmal diseases, as well as clinicians, neurologists and biomedical researchers. This project contributes to key areas of digital health, including neurotechnology, wearable devices, advanced signal processing technologies, remote patient monitoring, and real-time health data analysis.
What is the context?
Paroxysmal diseases are characterized by sudden, episodic conditions that cause temporary changes in the body. Among them, epilepsy stands out for causing synchronous and uncontrolled neuronal discharges, resulting in recurrent and unprovoked seizures. These seizures may involve a loss or change in level of consciousness, abnormal movements or psychological symptoms. Other conditions, such as migraines, sleep disorders, and psychogenic non-epileptic seizures, may present similar symptoms but originate from different mechanisms and generally do not present abnormalities in brain activity.
EEG is a non-invasive procedure that records brain electrical activity and identifies abnormal patterns, such as spikes and waves associated with epilepsy. It is essential for distinguishing epileptic from non-epileptic seizures, ensuring an accurate diagnosis in cases of overlapping symptoms. While short-term EEG is often the first step in diagnosing epilepsy, infrequent seizures or inconclusive results may require long-term monitoring to determine whether the origin of seizures is focal (in a specific region of the brain) or generalized (involving both hemispheres simultaneously), essential information for treatment.
According to the American Clinical Neurophysiology Society, long-term EEG monitoring requires 32 to 64 channels for precise seizure localization, 24-hour continuous recording to capture rare events and, preferably, the inclusion of event detection algorithms for real-time analysis. Other relevant specifications include the ability to detect high frequencies to identify epileptic peaks, provide high signal resolution, and incorporate comfortable and easy-to-set-up electrodes to enhance usability and minimize preparation time.
What are the current approaches?
The diagnosis of epilepsy is currently based on hospital monitoring, which combines simultaneous video recording and the use of EEG, connected by wires to a computer for analysis of electrical signals. This method is costly, time-consuming, and limits patient mobility.
Ambulatory EEG monitoring offers a convenient alternative, enabling continuous brain activity recording during patients’ daily activities outside the hospital setting. These systems use scalp electrodes to capture analog EEG signals, which are amplified, converted into digital format by analog-to-digital converters (ADCs), and stored in a portable device before being wirelessly transmitted to a computer for visualization and processing.
However, current wireless EEG systems face significant challenges, such as low channel density (usually between 3-16) and limitations in both high-frequency detection (< 512 Hz) and signal resolution (< 24 bits). Although some studies have explored wireless EEGs with higher channel density or the ability to detect higher frequencies, these features are rarely combined into a single device. Additionally, many systems use conductive gel-based electrodes, which require lengthy preparation and can dry out during long-term monitoring, leading to signal degradation and patient discomfort. Another issue is the use of limited bandwidth (e.g., bluetooth) and reliance on external devices for processing and storage, which may require proximity to the computer performing data analysis, restricting patient mobility.
What does innovation consist of? How is the impact of this study assessed?
This research focuses on the development of a wireless and wearable EEG system, innovating in hardware, software, and operational functionalities. The proposed EEG platform stands out with its 32-channel configuration, high-frequency detection (256 to 1000 Hz) and high-resolution signal acquisition (24 bit per channel). To ensure data backup and offline analysis, the device includes an SD card. The device offers 2 operating modes via WiFi: continuous transmission for real-time monitoring, and event-driven transmission, which sends only relevant EEG segments after processing by epileptic event detection algorithms. Additionally, designed for long-term ambulatory monitoring, the device is powered by a 6600 mAh battery, providing up to 25 hours of continuous operation.
The hardware architecture includes active dry electrodes, ADCs, and a central processing and transmission unit. These gel-free electrodes contain gold-plated phosphor-bronze contacts for greater stability. The hardware uses 4 ADCs, each responsible for 8 channels and the main amplification of the analog signal before digitization. The ADCs operate in cascade mode, sharing common signals and efficiently transmitting the digitized EEG data. The central unit integrates 2 software components: a kernel driver within the Linux operating system, which controls which of the four ADCs is active and manages digital data acquisition, and a userspace application for data processing, storage, and transmission.
When new EEG data becomes available, the interrupt signal (DRDY-Data Ready) is triggered in the kernel driver, ensuring immediate priority for data processing. This pauses other tasks, stores the data in a readings memory buffer, groups it, and transfers it to the shared memory buffer, where it remains until the userspace application processes it. The userspace application begins by applying a Butterworth filter to remove noise before initiating processing, which includes feature extraction and event detection using epileptic algorithms. If an event is detected, the application automatically transmits the data via WiFi. Otherwise, the data is stored on the SD card, avoiding unnecessary transmissions and conserving energy. To facilitate real-time visualization and analysis, a C#-based application was developed within the .NET environment, allowing clinicians to review EEG signals efficiently on a computer.
The system evaluation included technical performance metrics, analyzing the efficiency in the acquisition, processing, storage and transmission of EEG data in real time, as well as energy consumption and clinical usability evaluations to determine its feasibility in long-term ambulatory monitoring.
In terms of technical performance, a key aspect analyzed was the task priority configuration, which affects the system’s ability to manage simultaneous operations. Two different configurations were tested: a default priority, where EEG data processing competes with other background tasks, and an immediate priority, where data acquisition receives the highest execution priority. Additionally, the efficiency of internal data transfer was assessed, focusing on the transition of EEG data from the readings memory buffer to the shared memory buffer, as well as retrieval from the shared memory buffer by the userspace application. The storage performance was measured by analyzing the read/write speed of the SD card, ensuring timely EEG data recording and retrieval. The wireless transmission efficiency was compared between ad-hoc WiFi mode, which directly connects the EEG device to a local receiver (e.g., a computer), and infrastructure-based communication, where data is transmitted through a centralized network (router), allowing distribution across multiple devices. Finally, power consumption and battery life were measured under two conditions: WiFi enabled, for continuous data streaming, and with WiFi disabled, for offline recording.
From a clinical usability perspective, the evaluation examined the system’s ability to accurately capture EEG signals under known physiological conditions. The device was tested for its ability to record alpha rhythms, a well-defined brain activity pattern that occurs when the eyes are closed and disappears when they are open. Additionally, it was evaluated for its sensitivity to muscle artifacts, such as those caused by jaw clenching, which can interfere with EEG recordings.
What are the main results? What is the impact of these results? What is the future of this approach?
In terms of EEG data acquisition performance, assigning immediate priority to signal processing reduced response time by up to 763 microseconds at its peak compared to default priority. Additionally, data transfer from the readings memory buffer to the shared memory buffer took 122 to 244 microseconds, while the userspace application accessed the shared memory buffer in 275 microseconds. These speeds ensured fast and efficient processing. The SD card storage speed reached 470 Mbps, allowing for efficient data retrieval and real-time processing. These factors ensure that the system can handle large volumes of brain signal data smoothly and without interruptions. Wireless transmission efficiency further enhances performance, with ad-hoc WiFi mode enabling fast data transfer at 11 Mbps, while WiFi router transmission is limited to 2.6 Mbps due to network overload and routing delays, making direct wireless connections preferable for real-time EEG visualization. Although essential for real-time monitoring, the WiFi module significantly increases power consumption, requiring 500 mAh compared to 250 mAh when WiFi is off. However, with a 6600 mAh battery, the system can operate for 26.4 hours in continuous streaming mode and 52.8 hours in offline mode. In a real-world clinical setting, where EEG do not occur continuously, event detection mode can further extend battery life.
The system demonstrates clinical feasibility, successfully detecting alpha rhythms under different conditions and distinguishing muscle artifacts, such as those caused by jaw clenching, confirming its suitability for diagnostic applications and its ability to differentiate neural signals from muscle interferences.
These findings have a significant impact, as the system provides a viable alternative to traditional inpatient monitoring, enabling faster epilepsy diagnosis. Its portability and ease of use make it suitable for long-term monitoring and event-driven interventions, supporting personalized medicine approaches for chronic neurological conditions. By reducing reliance on expensive hospital setups, this technology democratizes access to advanced neurological diagnostics.
The future of this technology involves miniaturization, power consumption optimization, and the integration of advanced analytics, including machine learning algorithms, to automate pattern recognition and anomaly detection, further enhancing its diagnostic capabilities. Beyond epilepsy, the system could be adapted for other applications like sleep studies. Ultimately, this technology represents a step toward better outcomes for patients with neurological disorders, also enhancing their quality of life even during diagnostic procedures.
Would you like to know all the details?
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Home / Publications / Publication

FACILITATING EPILEPSY DIAGNOSIS WITH A WIRELESS AND WEARABLE EEG SYSTEM
Publication type: Article Summary
Original title: Wireless and Wearable EEG Acquisition Platform for Ambulatory Monitoring
Article publication date: May 2014
Source: ResearchGate
Authors: Francisco Pinho, José Higino Correia, Nuno Sousa, João José Cerqueira & Nuno Sérgio Dias
What is the goal, target audience, and areas of digital health it addresses?
This research aims to develop a wearable wireless system for the acquisition of electroencephalogram (EEG) signals, allowing prolonged ambulatory monitoring of epilepsy. The target audience includes individuals with epilepsy or other paroxysmal diseases, as well as clinicians, neurologists and biomedical researchers. This project contributes to key areas of digital health, including neurotechnology, wearable devices, advanced signal processing technologies, remote patient monitoring, and real-time health data analysis.
What is the context?
Paroxysmal diseases are characterized by sudden, episodic conditions that cause temporary changes in the body. Among them, epilepsy stands out for causing synchronous and uncontrolled neuronal discharges, resulting in recurrent and unprovoked seizures. These seizures may involve a loss or change in level of consciousness, abnormal movements or psychological symptoms. Other conditions, such as migraines, sleep disorders, and psychogenic non-epileptic seizures, may present similar symptoms but originate from different mechanisms and generally do not present abnormalities in brain activity.
EEG is a non-invasive procedure that records brain electrical activity and identifies abnormal patterns, such as spikes and waves associated with epilepsy. It is essential for distinguishing epileptic from non-epileptic seizures, ensuring an accurate diagnosis in cases of overlapping symptoms. While short-term EEG is often the first step in diagnosing epilepsy, infrequent seizures or inconclusive results may require long-term monitoring to determine whether the origin of seizures is focal (in a specific region of the brain) or generalized (involving both hemispheres simultaneously), essential information for treatment.
According to the American Clinical Neurophysiology Society, long-term EEG monitoring requires 32 to 64 channels for precise seizure localization, 24-hour continuous recording to capture rare events and, preferably, the inclusion of event detection algorithms for real-time analysis. Other relevant specifications include the ability to detect high frequencies to identify epileptic peaks, provide high signal resolution, and incorporate comfortable and easy-to-set-up electrodes to enhance usability and minimize preparation time.
What are the current approaches?
The diagnosis of epilepsy is currently based on hospital monitoring, which combines simultaneous video recording and the use of EEG, connected by wires to a computer for analysis of electrical signals. This method is costly, time-consuming, and limits patient mobility.
Ambulatory EEG monitoring offers a convenient alternative, enabling continuous brain activity recording during patients’ daily activities outside the hospital setting. These systems use scalp electrodes to capture analog EEG signals, which are amplified, converted into digital format by analog-to-digital converters (ADCs), and stored in a portable device before being wirelessly transmitted to a computer for visualization and processing.
However, current wireless EEG systems face significant challenges, such as low channel density (usually between 3-16) and limitations in both high-frequency detection (< 512 Hz) and signal resolution (< 24 bits). Although some studies have explored wireless EEGs with higher channel density or the ability to detect higher frequencies, these features are rarely combined into a single device. Additionally, many systems use conductive gel-based electrodes, which require lengthy preparation and can dry out during long-term monitoring, leading to signal degradation and patient discomfort. Another issue is the use of limited bandwidth (e.g., bluetooth) and reliance on external devices for processing and storage, which may require proximity to the computer performing data analysis, restricting patient mobility.
What does innovation consist of? How is the impact of this study assessed?
This research focuses on the development of a wireless and wearable EEG system, innovating in hardware, software, and operational functionalities. The proposed EEG platform stands out with its 32-channel configuration, high-frequency detection (256 to 1000 Hz) and high-resolution signal acquisition (24 bit per channel). To ensure data backup and offline analysis, the device includes an SD card. The device offers 2 operating modes via WiFi: continuous transmission for real-time monitoring, and event-driven transmission, which sends only relevant EEG segments after processing by epileptic event detection algorithms. Additionally, designed for long-term ambulatory monitoring, the device is powered by a 6600 mAh battery, providing up to 25 hours of continuous operation.
The hardware architecture includes active dry electrodes, ADCs, and a central processing and transmission unit. These gel-free electrodes contain gold-plated phosphor-bronze contacts for greater stability. The hardware uses 4 ADCs, each responsible for 8 channels and the main amplification of the analog signal before digitization. The ADCs operate in cascade mode, sharing common signals and efficiently transmitting the digitized EEG data. The central unit integrates 2 software components: a kernel driver within the Linux operating system, which controls which of the four ADCs is active and manages digital data acquisition, and a userspace application for data processing, storage, and transmission.
When new EEG data becomes available, the interrupt signal (DRDY-Data Ready) is triggered in the kernel driver, ensuring immediate priority for data processing. This pauses other tasks, stores the data in a readings memory buffer, groups it, and transfers it to the shared memory buffer, where it remains until the userspace application processes it. The userspace application begins by applying a Butterworth filter to remove noise before initiating processing, which includes feature extraction and event detection using epileptic algorithms. If an event is detected, the application automatically transmits the data via WiFi. Otherwise, the data is stored on the SD card, avoiding unnecessary transmissions and conserving energy. To facilitate real-time visualization and analysis, a C#-based application was developed within the .NET environment, allowing clinicians to review EEG signals efficiently on a computer.
The system evaluation included technical performance metrics, analyzing the efficiency in the acquisition, processing, storage and transmission of EEG data in real time, as well as energy consumption and clinical usability evaluations to determine its feasibility in long-term ambulatory monitoring.
In terms of technical performance, a key aspect analyzed was the task priority configuration, which affects the system’s ability to manage simultaneous operations. Two different configurations were tested: a default priority, where EEG data processing competes with other background tasks, and an immediate priority, where data acquisition receives the highest execution priority. Additionally, the efficiency of internal data transfer was assessed, focusing on the transition of EEG data from the readings memory buffer to the shared memory buffer, as well as retrieval from the shared memory buffer by the userspace application. The storage performance was measured by analyzing the read/write speed of the SD card, ensuring timely EEG data recording and retrieval. The wireless transmission efficiency was compared between ad-hoc WiFi mode, which directly connects the EEG device to a local receiver (e.g., a computer), and infrastructure-based communication, where data is transmitted through a centralized network (router), allowing distribution across multiple devices. Finally, power consumption and battery life were measured under two conditions: WiFi enabled, for continuous data streaming, and with WiFi disabled, for offline recording.
From a clinical usability perspective, the evaluation examined the system’s ability to accurately capture EEG signals under known physiological conditions. The device was tested for its ability to record alpha rhythms, a well-defined brain activity pattern that occurs when the eyes are closed and disappears when they are open. Additionally, it was evaluated for its sensitivity to muscle artifacts, such as those caused by jaw clenching, which can interfere with EEG recordings.
What are the main results? What is the impact of these results? What is the future of this approach?
In terms of EEG data acquisition performance, assigning immediate priority to signal processing reduced response time by up to 763 microseconds at its peak compared to default priority. Additionally, data transfer from the readings memory buffer to the shared memory buffer took 122 to 244 microseconds, while the userspace application accessed the shared memory buffer in 275 microseconds. These speeds ensured fast and efficient processing. The SD card storage speed reached 470 Mbps, allowing for efficient data retrieval and real-time processing. These factors ensure that the system can handle large volumes of brain signal data smoothly and without interruptions. Wireless transmission efficiency further enhances performance, with ad-hoc WiFi mode enabling fast data transfer at 11 Mbps, while WiFi router transmission is limited to 2.6 Mbps due to network overload and routing delays, making direct wireless connections preferable for real-time EEG visualization. Although essential for real-time monitoring, the WiFi module significantly increases power consumption, requiring 500 mAh compared to 250 mAh when WiFi is off. However, with a 6600 mAh battery, the system can operate for 26.4 hours in continuous streaming mode and 52.8 hours in offline mode. In a real-world clinical setting, where EEG do not occur continuously, event detection mode can further extend battery life.
The system demonstrates clinical feasibility, successfully detecting alpha rhythms under different conditions and distinguishing muscle artifacts, such as those caused by jaw clenching, confirming its suitability for diagnostic applications and its ability to differentiate neural signals from muscle interferences.
These findings have a significant impact, as the system provides a viable alternative to traditional inpatient monitoring, enabling faster epilepsy diagnosis. Its portability and ease of use make it suitable for long-term monitoring and event-driven interventions, supporting personalized medicine approaches for chronic neurological conditions. By reducing reliance on expensive hospital setups, this technology democratizes access to advanced neurological diagnostics.
The future of this technology involves miniaturization, power consumption optimization, and the integration of advanced analytics, including machine learning algorithms, to automate pattern recognition and anomaly detection, further enhancing its diagnostic capabilities. Beyond epilepsy, the system could be adapted for other applications like sleep studies. Ultimately, this technology represents a step toward better outcomes for patients with neurological disorders, also enhancing their quality of life even during diagnostic procedures.
Would you like to know all the details?
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Schizophrenia is a chronic mental disorder that significantly affects thinking, emotions, perception of reality and behaviour. It is characterised by a break with reality (psychosis), often manifested by hallucinations (such as hearing non-existent voices), delusions…
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Eye diseases represent a growing public health challenge in Portugal, significantly compromising the population’s quality of life. The increase in their prevalence is associated with various factors, such as demographic ageing, excessive use of digital…
Improving Efficiency in the Clinical Follow-up for Covid-19 Cases With a Digital Platform
COVID-19, caused by the SARS-CoV-2 virus, is a highly contagious disease with the potential to cause serious complications, requiring the isolation of infected individuals and appropriate clinical follow-up. While severe cases require hospitalization, patients with…
The Rising Threat of Antibiotic-resistant Klebsiella in Portuguese Hospitals
Healthcare-associated infections pose a serious public health threat, as they are acquired during medical treatments or hospital stays, often leading to prolonged hospitalizations, high costs for healthcare systems and high mortality rates. Portugal has one…
Deep Neural Networks And The Future Of Early Detection Of Alzheimer’s Disease
Alzheimer’s disease is the most common form of dementia, affecting more than 55 million people globally and accounting for around 70 percent of dementia cases. In Portugal, it is estimated that 200,000 people live with…
The Challenges of Data Protection in Digital Health Platforms for the Elderly
Demographic ageing poses significant challenges to healthcare systems, intensifying the pressure on infrastructures and human resources. It is estimated that by 2050 the elderly population will exceed 2 billion people, making it imperative to implement…
Mobile Application to Improve Workflows in Nursing Homes
Portugal has one of the highest aging populations in the world, placing increasing pressure on elderly care services, especially in nursing homes. Healthcare professionals in these facilities are often overwhelmed due to the increasing number…
Automatic Segmentation of Blood Vessels in Carotid Ultrasound Images
Vascular diseases, such as carotid stenosis (narrowing of the carotid arteries, which connect the heart to the brain, caused by the accumulation of fatty atheroma plaques), cerebrovascular accidents (CVA) (sudden interruption of blood flow to…
Impact of Robotherapy-PARO on Elderly People With Dementia in Portugal
Aging is a gradual, multifactorial and continuous process characterized by the progressive loss of biological function and degeneration associated with the onset of age-related diseases. In Portugal, the aging of the population is particularly noticeable,…
New Era of Interoperability in Healthcare Systems
The growing use of electronic health records, digital diagnostic systems and remote monitoring technologies has led to a significant increase in the volume and complexity of health data. This increase intensifies the need for continuous,…
Improvement in Breast Tumor Localization With an Image Fusion Algorithm
Breast-conserving surgery aims to remove tumors while preserving as much healthy breast tissue as possible, ensuring optimal aesthetic outcomes that are critical for a patient’s quality of life. To achieve this objective, precise location of…
Collaborative Robotics Improves Working Conditions
Workers face growing challenges in the industrial environment. Among the most critical are fatigue and inappropriate postures, often associated with repetitive tasks and working conditions that lack ergonomic suitability. These factors represent significant risks for…
The Role of Mobile Technologies in the Monitoring and Rehabilitation of Peripheral Arterial Disease
PAD is a prevalent chronic condition, affecting approximately 200 million individuals globally, characterized by obstruction of the peripheral arteries, especially in the lower extremities, due to the formation of atherosclerotic plaques, which compromise blood flow…
Incorporation of Digital Implants Into CT Images to Plan Orthopedic Surgery
Orthopedic surgery addresses conditions of the musculoskeletal system to alleviate pain, restore function, and enhance the patient’s quality of life. Its success relies on meticulous pre-operative planning that incorporates clinical data and patient-specific imaging to…
Digital Health at the Top of the National Poliempreende 2024 Results
Poliempreende is a consolidated national network for encouraging entrepreneurship in higher education in Portugal, with two decades of existence. Focused on promoting innovation, the competition has had a significant impact on the national economy, with…
Digital Solution Facilitates Interaction Between Users and Health Professionals
Many patients face difficulties scheduling medical appointments in hospital units, and, when successful, they often endure long waiting times to be attended. This situation is aggravated by problems such as the incompatibility of schedules between…
The Impact of Calm Computing Integration on the Clinical Process
In recent years, digital transformation in healthcare has played a crucial role, driven by the exponential increase in medical data. This ranges from administrative information to detailed records of diagnoses, laboratory tests, medical images and…
ULS Almada-Seixal Revolutionizes With the Region’s First Surgical Robot
In recent years, ULSAS has been gradually implementing robotic systems, reinforcing its commitment to innovation and improving healthcare. Recently, the institution acquired a state-of-the-art robotic system, developed under the concept of an ‘immersive intuitive interface’,…
Online Intervention Aims to Prevent Anxiety in the General Population
Anxiety disorders are a global problem, affecting 300 million people worldwide and placing significant pressure on individuals and healthcare systems. In Europe alone, the economic impact reached 74.380 million in 2010, with 62.2% attributed to…
Rehabilitation of Facial Paralysis Through Virtual Assistants
Facial paralysis, defined by the inability to move one or both sides of the face, has an incidence of 20 to 30 cases per 100,000 people annually. This condition often causes facial weakness, difficulties in…
Detection of Anxiety and Panic Attacks in Real Time
The growing number of people with anxiety disorders, along with increased awareness of mental health, drives the need for new technological tools that provide remote and continuous monitoring of anxiety and panic disorders. Thus, the…
A Novel Approach for Robotic-assisted Tele-echography
Currently, robotic systems for ultrasound diagnostic procedures fall into two main categories: portable robots that require manual positioning and fully autonomous robotic systems that independently control the ultrasound probe’s orientation and positioning. Portable robots rely…
From Big Data to Big Decisions: How AI Stratifies Cancer Cases by Risk Factors
The CLARIFY Decision Support Platform (DSP) is a responsive web application designed to support decision-making in cancer care through real-time data integration and predictive analytics. Built on Big Data Europe, the platform integrates a variety…
From “Free Text” to Structured Clinical Data: the Foundation for Clinical Decision Support Systems
Currently, the practice of recording clinical information in “free text” offers flexibility, but hinders automatic data extraction, limiting the application of analytical models. Most records are unstructured, and the use of non-standard abbreviations increases ambiguity,…
Artificial Intelligence used in Depression Detection in Cancer Survivors
The goal of the FAITH project (Federated Artificial Intelligence solution for moniToring mental Health status after cancer treatment) is to remotely identify and predict depressive symptoms in cancer survivors using a federated machine learning approach…
Integration of SONHO v2 and SClínico Systems at ULS of Coimbra to Improve Healthcare Services
With more than half a million hospital medical consultations carried out in the first half of 2024, the ULS of Coimbra stands out as an institution dedicated to integrated, high-quality and patient-centered healthcare, with 8…
Elderly Care Ecosystem: an Innovative Platform for Personalized and Efficient Services
The Elderly Care Ecosystem (ECE) is an integration of various digital health technologies, exploring the areas of telehealth and predictive analytics. The goal of this ecosystem is to improve the quality of life for elderly…
Innovative technology that subconsciously relieves anxiety through a scarf
The SCAARF technology aims to offer an alternative method to alleviate anxiety symptoms in a non-intrusive and subconscious way. This technology is an innovative idea in the field of digital health and wearable technology, designed…
Digital Health Interventions: Equity in Hypertension Care for Everyone
Nearly half of all adults in the United States have hypertension, one of the leading risk factors for cardiovascular disease, and only about a quarter (24%) of those people have their hypertension under control. Studies…
Personalization and Technology in Diabetes Management
IPDM has significant potential to improve diabetes management and drive health system reforms to become high-performing, effective, equitable, accessible, and sustainable. Evidence and good practices inspire health system transformation. Adopting person-centred approaches like co-creation and…
Negotiations on the European Health Data Space Advance With the Participation of the SPMS
The European Health Data Space will be a common health data sharing system across the European Union. It foresees the use of data for purposes that benefit people and society. It will ensure citizens have…
Secretary of State Margarida Tavares Emphasizes Digital Innovation in Health Promotion
Margarida Tavares spoke at the opening of the conference ” O Digital na promoção contínua da saúde e do bem-estar”, organized by the Associação para a Promoção e Desenvolvimento da Sociedade da Informação (APDSI) and…
ARS Algarve Modernizes Radiology With AI and New Data Center
The radiology service of ARS Algarve has already performed nearly 29,000 exams using Artificial Intelligence (AI) technology. In recent years, there has been a significant investment in image digitization and data storage, as well as…
European Health Data Space: Unified Access To Health Data In The EU
The COVID-19 pandemic highlighted the importance of digital services in health, but complex rules and increasing cyberattacks make it difficult to share data across Member States; the EHDS, based on several regulations, provides tailor-made rules…
European Commission Amends Digital Europe Programme With an Investment of €762.7 Million
The European Commission has amended the Digital Europe Programme work programmes 2023-2024, investing an additional €762.7 million in Europe’s digital transition and cybersecurity. The digital transition is the main work programme with a budget of…
SPMS Integrates the TEF-Health Initiative
SPMS participates in the TEF-Health initiative as a partner in a consortium composed of 51 entities from 9 European Union countries. This action is co-financed by the European Commission and has a duration of five…
FMUP Creates Inhealth Junior Academy for High School Students
The InHealth Junior Academy — Academia Júnior de Inovação em Saúde is an initiative of the Departamento de Medicina da Comunidade, Informação e Decisão em Saúde da Faculdade de Medicina da Universidade do Porto (FMUP)….
SPMS Represents Portugal as Vice-president of GDHP
The GDHP is an intergovernmental organization in the digital health sector that facilitates cooperation and collaboration between government representatives and the World Health Organization (WHO). Its purpose is to foster policymaking that promote the digitalization…
Digital Transformation of Health at INCoDe.2030 in Tomar
The “National Digital Skills Initiative e.2030, Portugal” (INCoDe.2030) is an initiative that aims to improve the Portuguese population’s level of digital skills, placing Portugal at the level of the most advanced European countries in this…
Braga Hospital Evaluates Memory With Interactive Game in Patients With Multiple Sclerosis
Multiple Sclerosis is known as a chronic disease of the central nervous system, with a wide variety of motor and sensory symptoms that can lead to work disability, socioeconomic burden, and reduced quality of life…
Neurosurgery Teleconsultation Wins Innovation Award
The aim of the BI Award for Innovation in Healthcare is to recognize innovative projects in the healthcare sector that improve the quality of life for the Portuguese people. In 2021, the specific theme was…
HealthData@PT: New SPMS Initiative for Health Data
Action HealthData@PT is launched in the context of the implementation of the European Health Data Space, and is an initiative approved by the European Commission under the EU4Health 2021-2027 programme. This initiative contributes to the…
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