, Chapitre 6. Fonctionnalités, visualisation et études préliminaires

M. Anastassova, M. Boukallel, M. Ammi, and M. , Design and study of a smart cup for monitoring the arm and hand activity of stroke patients, Les travaux présentés dans ce chapitre ont donné lieu à deux publications : ? Bobin, 2018.

M. Bobin, M. Boukallel, M. Anastassova, F. Bimbard, and M. Ammi, SpECTRUM : Smart ECosystem for sTRoke patient's Upper limbs Monitoring, Communication soumise à Smart Health Journal ELSEVIER, 2018.

. .. Pré-tests,

. .. Étude-d'utilisabilité,

. .. Résultats,

. .. Conclusion,

M. Anastassova, M. Boukallel, M. Ammi, and M. , Design and study of a smart cup for monitoring the arm and hand activity of stroke patients, Les travaux présentés dans ce chapitre ont donné lieu à deux publications : ? Bobin, 2018.

M. Bobin, M. Boukallel, M. Anastassova, F. Bimbard, and M. Ammi, SpECTRUM : Smart ECosystem for sTRoke patient's Upper limbs Monitoring, Communication soumise à Smart Health Journal ELSEVIER, 2018.

, Suivre le niveau de liquide dans le verre est-il pertinent pour l'évaluation de l'indépendance et des fonctions motrices du patient ? Pourquoi ?

, Détecter la position du verre par rapport à une cible est-il pertinent pour l'évaluation de l'indépendance et des fonctions motrices du patient ? Pourquoi ?

, Suivre la pression exercée par le patient sur le verre est-il pertinent pour l'évaluation de l'indépendance et des fonctions motrices du patient ? Pourquoi ?

, ? Que pensez-vous du positionnement des capteurs de pression sur le verre ? ? Remonter à l'orientation du verre est-il pertinent pour l'évaluation de l'indépendance et des fonctions motrices du patient ? Pourquoi ?

, Détecter les tremblements du patient lors de la manipulation du verre est-il pertinent pour l'évaluation de l'indépendance et des fonctions motrices du patient ? Pourquoi ?

?. Si, préférez-vous connaître uniquement la fréquence des tremblements, uniquement leur amplitude ou les deux ? Pourquoi ?

?. , utilisation d'un retour visuel pour le niveau d'eau est-il pertinent dans le cadre d'une utilisation par des patients victimes d'AVC ? Pourquoi ?

?. , utilisation d'un retour audio pour le positionnement du verre sur une cible est-il pertinent dans le cadre d'une utilisation par des patients victimes d'AVC ? Pourquoi ?

, Souhaitez-vous proposer aux patients un quelconque retour concernant la pression exercée sur le verre ? Pourquoi ?

?. , utilisation d'un retour visuel pour l'orientation du verre est-il pertinent dans le cadre d'une utilisation par des patients victimes d'AVC ? Pourquoi ? ? Souhaitez-vous proposer aux patients un quelconque retour concernant les tremblements détectés par le verre ? Pourquoi ?

, ? Avez-vous des remarques concernant les dimensions du verre ?

, Les informations personnelles collectées auprès des patients sont listées ci-dessous. ? Nom ? Prénom ? Date de naissance ? Type d'AVC

, Les questions posées aux patients sur l'utilisabilité des objets sont présentées ci-dessous

, ? Que pensez-vous de la facilité d'utilisation de l'osselet ? (taille, poids, texture, positionnement des capteurs

, ? Que pensez-vous de la facilité d'utilisation du cube (taille, poids, texture, positionnement des capteurs

, ? Que pensez-vous de la facilité d'utilisation du bracelet ? ? Que pensez-vous de la facilité d

, Quels problèmes potentiels voyez-vous à l'utilisation de l'un de ces objets ? Avez-vous des craintes vis-à-vis de ces objets, p.203

, Les questions posées aux patients sur l'acceptabilité des objets et leurs applications futures sont présentées ci-dessous

, ? Voudriez-vous utiliser ces objets pendant vos séances de rééducation ? Lesquels ? Pourquoi ? ? Avez-vous une préférence parmi ces objets ? Pourquoi ? ? Quel type d'application ou d'exercices imaginez-vous avec ces objets ? ? Voudriez-vous utiliser le verre à votre domicile ? Pourquoi ? ? Avez-vous des craintes quant à la transmission des données collectées par ces objets

, Enfin, la dernière question de l'entretien individuel consistait à récolter des commentaires sur l'expérience, p.204

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