Claudia Mazza
Overview
Explore the profile of Claudia Mazza including associated specialties, affiliations and a list of published articles.
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103
Citations
1589
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Recent Articles
1.
Tasca P, Salis F, Rosati S, Balestra G, Mazza C, Cereatti A
IEEE Trans Neural Syst Rehabil Eng
. 2025 Mar;
33:858-867.
PMID: 40031542
Head-worn inertial sensors represent a valuable option to characterize gait in real-world conditions, thanks to the integration with glasses and hearing aids. Few methods based on head-worn sensors allow for...
2.
Albites-Sanabria J, Palumbo P, DAscanio I, Bonci T, Caruso M, Salis F, et al.
IEEE Trans Neural Syst Rehabil Eng
. 2025 Mar;
PP.
PMID: 40031239
The L-test is a performance-based measure to assess balance and mobility. Currently, the primary outcome from this test is the time required to finish it. In this study we present...
3.
Karatsidis A, Angelini L, Scaramozza M, Bartholome E, Clinch S, Shen C, et al.
Mult Scler
. 2025 Feb;
:13524585251316242.
PMID: 39963834
Background: Mobility assessment is essential for monitoring disease progression in people with multiple sclerosis (PwMS). Technologies such as wearable sensors show potential for this purpose, but consensus is needed to...
4.
Kirk C, Kuderle A, Encarna Mico-Amigo M, Bonci T, Paraschiv-Ionescu A, Ullrich M, et al.
Sci Rep
. 2024 Nov;
14(1):28878.
PMID: 39572620
No abstract available.
5.
Scaramozza M, Ruet A, Chiesa P, Ahamada L, Bartholome E, Carment L, et al.
JMIR Form Res
. 2024 Nov;
8:e60673.
PMID: 39515815
Background: Smartphones and wearables are revolutionizing the assessment of cognitive and motor function in neurological disorders, allowing for objective, frequent, and remote data collection. However, these assessments typically provide a...
6.
Arteaga-Bracho E, Cosne G, Kanzler C, Karatsidis A, Mazza C, Penalver-Andres J, et al.
J Neuromuscul Dis
. 2024 Jul;
11(5):1049-1065.
PMID: 38995798
Background: More responsive, reliable, and clinically valid endpoints of disability are essential to reduce size, duration, and burden of clinical trials in adult persons with spinal muscular atrophy (aPwSMA). Objective:...
7.
Encarna Mico-Amigo M, Bonci T, Paraschiv-Ionescu A, Ullrich M, Kirk C, Soltani A, et al.
J Neuroeng Rehabil
. 2024 May;
21(1):71.
PMID: 38702693
No abstract available.
8.
Kluge F, Brand Y, Encarna Mico-Amigo M, Bertuletti S, DAscanio I, Gazit E, et al.
JMIR Form Res
. 2024 May;
8:e50035.
PMID: 38691395
Background: Wrist-worn inertial sensors are used in digital health for evaluating mobility in real-world environments. Preceding the estimation of spatiotemporal gait parameters within long-term recordings, gait detection is an important...
9.
Henson W, Li X, Lin Z, Guo L, Mazza C, DallAra E
PLoS One
. 2024 Apr;
19(4):e0299099.
PMID: 38564618
Individual muscle segmentation is the process of partitioning medical images into regions representing each muscle. It can be used to isolate spatially structured quantitative muscle characteristics, such as volume, geometry,...
10.
Kirk C, Kuderle A, Encarna Mico-Amigo M, Bonci T, Paraschiv-Ionescu A, Ullrich M, et al.
Sci Rep
. 2024 Jan;
14(1):1754.
PMID: 38243008
This study aimed to validate a wearable device's walking speed estimation pipeline, considering complexity, speed, and walking bout duration. The goal was to provide recommendations on the use of wearable...