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Dive into the research topics where Daniele Corda is active.

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Featured researches published by Daniele Corda.


ubiquitous computing | 2013

A mobile data collection platform for mental health research

Andrea Gaggioli; Giovanni Pioggia; Gennaro Tartarisco; Giovanni Baldus; Daniele Corda; Pietro Cipresso; Giuseppe Riva

Ubiquitous computing technologies offer exciting new possibilities for monitoring and analyzing user’s experience in real time. In this paper, we describe the design and development of Psychlog, a mobile phone platform designed to collect users’ psychological, physiological, and activity information for mental health research. The tool allows administering self-report questionnaires at specific times or randomly within a day. The system also permits to collect heart rate and activity information from a wireless electrocardiogram equipped with a three-axial accelerometer. By combining self-reports with heart rate and activity data, the application makes it possible to investigate the relationship between psychological, physiological, and behavioral variables, as well as to monitor their fluctuations over time. The software runs on Windows mobile operative system and is available as open source (http://sourceforge.net/projects/psychlog/).


Computer Communications | 2012

Personal Health System architecture for stress monitoring and support to clinical decisions

Gennaro Tartarisco; Giovanni Baldus; Daniele Corda; Rossella Raso; Antonino Arnao; Marcello Ferro; Andrea Gaggioli; Giovanni Pioggia

Developments in computational techniques including clinical decision support systems, information processing, wireless communication and data mining hold new premises in Personal Health Systems. Pervasive Healthcare system architecture finds today an effective application and represents in perspective a real technological breakthrough promoting a paradigm shift from diagnosis and treatment of patients based on symptoms to diagnosis and treatment based on risk assessment. Such architectures must be able to collect and manage a large quantity of data supporting the physicians in their decision process through a continuous pervasive remote monitoring model aimed to enhance the understanding of the dynamic disease evolution and personal risk. In this work an automatic simple, compact, wireless, personalized and cost efficient pervasive architecture for the evaluation of the stress state of individual subjects suitable for prolonged stress monitoring during normal activity is described. A novel integrated processing approach based on an autoregressive model, artificial neural networks and fuzzy logic modeling allows stress conditions to be automatically identified with a mobile setting analysing features of the electrocardiographic signals and human motion. The performances of the reported architecture were assessed in terms of classification of stress conditions.


International Journal of Cardiology | 2014

Olfactory non-cancer effects of exposure to ionizing radiation in staff working in the cardiac catheterization laboratory

Alessandro Tonacci; Giovanni Baldus; Daniele Corda; Emanuela Piccaluga; Mariagrazia Andreassi; Alberto Cremonesi; Giulio Guagliumi; Eugenio Picano

few data have been reported in literature [3,9], showing favorable results especially with imaging techniques. For example, for the present patient, self expandable nitinol structure was not enough to obtain a complete apposition of the struts of the stent, needing a postdilatation after IVUS. STENTYS, together with the use of imaging technique, represents a safe and efficacy strategy for ectatic lesions. We thank AnnaMaria Turis for the technical consulting.


medicine meets virtual reality | 2012

An open source mobile platform for psychophysiological self tracking.

Andrea Gaggioli; Pietro Cipresso; Silvia Serino; Giovanni Pioggia; Gennaro Tartarisco; Giovanni Baldus; Daniele Corda; Giuseppe Riva

Self tracking is a recent trend in e-health that refers to the collection, elaboration and visualization of personal health data through ubiquitous computing tools such as mobile devices and wearable sensors. Here, we describe the design of a mobile self-tracking platform that has been specifically designed for clinical and research applications in the field of mental health. The smartphone-based application allows collecting a) self-reported feelings and activities from pre-programmed questionnaires; b) electrocardiographic (ECG) data from a wireless sensor platform worn by the user; c) movement activity information obtained from a tri-axis accelerometer embedded in the wearable platform. Physiological signals are further processed by the application and stored on the smartphones memory. The mobile data collection platform is free and released under an open source licence to allow wider adoption by the research community (download at: http://sourceforge.net/projects/psychlog/).


Frontiers in Neuroscience | 2016

An Integrated Approach for the Monitoring of Brain and Autonomic Response of Children with Autism Spectrum Disorders during Treatment by Wearable Technologies

Lucia Billeci; Alessandro Tonacci; Gennaro Tartarisco; Antonio Narzisi; Simone Di Palma; Daniele Corda; Giovanni Baldus; Federico Cruciani; Salvatore Maria Anzalone; Sara Calderoni; Giovanni Pioggia; Filippo Muratori

Autism Spectrum Disorders (ASD) are associated with physiological abnormalities, which are likely to contribute to the core symptoms of the condition. Wearable technologies can provide data in a semi-naturalistic setting, overcoming the limitations given by the constrained situations in which physiological signals are usually acquired. In this study an integrated system based on wearable technologies for the acquisition and analysis of neurophysiological and autonomic parameters during treatment is proposed and an application on five children with ASD is presented. Signals were acquired during a therapeutic session based on an imitation protocol in ASD children. Data were analyzed with the aim of extracting quantitative EEG (QEEG) features from EEG signals as well as heart rate and heart rate variability (HRV) from ECG. The system allowed evidencing changes in neurophysiological and autonomic response from the state of disengagement to the state of engagement of the children, evidencing a cognitive involvement in the children in the tasks proposed. The high grade of acceptability of the monitoring platform is promising for further development and implementation of the tool. In particular if the results of this feasibility study would be confirmed in a larger sample of subjects, the system proposed could be adopted in more naturalistic paradigms that allow real world stimuli to be incorporated into EEG/psychophysiological studies for the monitoring of the effect of the treatment and for the implementation of more individualized therapeutic programs.


medicine meets virtual reality | 2014

A decision support system for real-time stress detection during virtual reality exposure

Andrea Gaggioli; Pietro Cipresso; Silvia Serino; Giovanni Pioggia; Gennaro Tartarisco; Giovanni Baldus; Daniele Corda; Marcello Ferro; Nicola Carbonaro; Alessandro Tognetti; Danilo De Rossi; Dimitris Giakoumis; Dimitrios Tzovaras; Alejandro Riera; Giuseppe Riva

Virtual Reality (VR) is increasingly being used in combination with psycho-physiological measures to improve assessment of distress in mental health research and therapy. However, the analysis and interpretation of multiple physiological measures is time consuming and requires specific skills, which are not available to most clinicians. To address this issue, we designed and developed a Decision Support System (DSS) for automatic classification of stress levels during exposure to VR environments. The DSS integrates different biosensor data (ECG, breathing rate, EEG) and behavioral data (body gestures correlated with stress), following a training process in which self-rated and clinical-rated stress levels are used as ground truth. Detected stress events for each VR session are reported to the therapist as an aggregated value (ranging from 0 to 1) and graphically displayed on a diagram accessible by the therapist through a web-based interface.


biomedical engineering systems and technologies | 2012

An event-driven psychophysiological assessment for health care

Silvia Serino; Pietro Cipresso; Gennaro Tartarisco; Giovanni Baldus; Daniele Corda; Giovanni Pioggia; Andrea Gaggioli; Giuseppe Riva

Computerized experience-sampling method comprising a mobilebased system that collects psychophysiological data appears to be a very promising assessment approach to investigate the real-time fluctuation of experience in daily life in order to detect stressful events. At this purpose, we developed PsychLog (http://sourceforge.net/projects/psychlog/) a free opensource mobile experience sampling platform that allows psychophysiological data to be collected, aggregated, visualized and collated into reports. Results showed a good classification of relaxing and stressful events, defining the two groups with psychological analysis and verifying the discrimination with physiological measures. Our innovative approach offers to researchers and clinicians new effective opportunities to assess and treat psychological stress in daily-life environments.


ICST Transactions on Ambient Systems | 2013

Computerized experience-sampling approach for realtime assessment of stress

Silvia Serino; Pietro Cipresso; Gennaro Tartarisco; Giovanni Baldus; Daniele Corda; Giovanni Pioggia; Andrea Gaggioli; Giuseppe Riva

The incredible advancement in the ICT sector has challenged technology developers, designers, and psychologists to reflect on how to develop technologies to promote mental health. Computerized experience-sampling method appears to be a promising assessment approach to investigate the real-time fluctuation of experience in daily life in order to detect stressful events. At this purpose, we developed PsychLog (http://psychlog.com) a free open-source mobile experience sampling platform that allows psychophysiological data to be collected, aggregated, visualized and collated into reports. Results showed a good classification of relaxing and stressful events, defining the two groups with psychological analysis and verifying the discrimination with physiological measures. Within the paradigm of Positive Technology, our innovative approach offers for researchers and clinicians new effective opportunities for the assessment and treatment of the psychological stress in daily situations.


Archive | 2014

A Smart System to Detect Volatile Organic Compounds Produced by Hydrocarbons on Seawater

Alessandro Tonacci; Daniele Corda; Gennaro Tartarisco; Giovanni Pioggia; C. Domenici

Hydrocarbons are considered one of the most important and dangerous pollutants for environment, in general, and for marine environment in particular. Their detection can be performed in several ways, employing different kinds of systems, such as fixed gas analyzers or gas chromatographs, to be mainly used in laboratory, or portable analyzers, having good performances but a considerably high cost.


Clean-soil Air Water | 2015

A Smart Sensor System for Detecting Hydrocarbon Volatile Organic Compounds in Sea Water

Alessandro Tonacci; Daniele Corda; Gennaro Tartarisco; Giovanni Pioggia; C. Domenici

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Giovanni Baldus

National Research Council

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Andrea Gaggioli

Catholic University of the Sacred Heart

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Pietro Cipresso

Catholic University of the Sacred Heart

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C. Domenici

National Research Council

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