Author/Authors :
Tangaro, Sabina Istituto Nazionale di Fisica Nucleare - Sezione di Bari - Via Orabona - Bari, Italy , Fanizzi, Annarita Dipartimento Interateneo di Fisica “M. Merlin” - Universita degli studi di Bari “A. Moro” - Via Orabona - Bari, Italy , Amoroso, Nicola Dipartimento Interateneo di Fisica “M. Merlin” - Universita degli studi di Bari “A. Moro” - Via Orabona - Bari, Italy , Corciulo, Roberto Nephrology - Dialysis and Transplantation Unit - University of Bari “A. Moro” - Piazza G. Cesare - Policlinico - Bari, Italy , Garuccio, Elena Department of Physical Sciences - Earth and Environment - University of Siena - Strada Laterina - Siena, Italy , Gesualdo, Loreto Nephrology - Dialysis and Transplantation Unit - University of Bari “A. Moro” - Piazza G. Cesare - Policlinico - Bari, Italy , Loizzo, Giuliana Nephrology - Dialysis and Transplantation Unit - University of Bari “A. Moro” - Piazza G. Cesare - Policlinico - Bari, Italy , Procaccini, Deni Aldo Nephrology - Dialysis and Transplantation Unit - University of Bari “A. Moro” - Piazza G. Cesare - Policlinico - Bari, Italy , Vernò, Lucia Nephrology - Dialysis and Transplantation Unit - University of Bari “A. Moro” - Piazza G. Cesare - Policlinico - Bari, Italy , Bellotti, Roberto Istituto Nazionale di Fisica Nucleare - Sezione di Bari - Via Orabona - Bari, Italy
Abstract :
Monitoring of dialysis sessions is crucial as different stress factors can yield suffering or critical situations. Specialized personnel
is usually required for the administration of this medical treatment; nevertheless, subjects whose clinical status can be considered
stable require different monitoring strategies when compared with subjects with critical clinical conditions. In this case domiciliary
treatment or monitoring can substantially improve the quality of life of patients undergoing dialysis. In this work, we present a
Computer Aided Detection (CAD) system for the telemonitoring of patients’ clinical parameters. The CAD was mainly designed to
predict the insurgence of critical events; it consisted of two Random Forest (RF) classifiers: the first one (RF1) predicting the onset
of any malaise one hour after the treatment start and the second one (RF2) again two hours later. The developed system shows an
accurate classification performance in terms of both sensitivity and specificity.The specificity in the identification of nonsymptomatic
sessions and the sensitivity in the identification of symptomatic sessions for RF2 are equal to 86.60% and 71.40%, respectively, thus
suggesting the CAD as an effective tool to support expert nephrologists in telemonitoring the patients.
Keywords :
System , Hemodialysis , Malaise , CAD