OBJECTIVE: Electrical impedance myography (EIM) is a relatively new technique to assess neuromuscular disorders (NMD). Although the application of EIM using surface electrodes (sEIM) has been adopted by the neurology community in recent years to evaluate NMD status, sEIM's sensitivity as a biomarker of skeletal muscle condition is impacted by subcutaneous fat (SF) tissue. Here, we develop a method that is able to remove the contribution of SF from sEIM data. METHODS: We evaluate independent component analysis (ICA) and principal component analysis (PCA) for this purpose. Then, we introduce the so-called model component analysis (MCA). All methods are validated with numerical simulations using impedivity data from SF and muscle tissues. The methods are then tested with measurements performed in diseased individuals ( n=3). RESULTS: Simulations demonstrate that MCA is the most accurate method at separating the impedivity of SF and muscle tissues with the accuracy being 99.2%, followed by ICA with 51.4%, and finally PCA with 38.5%. Experimental results from sEIM data measured on the triceps brachii of patients are consistent with muscle grayscale level values obtained using ultrasound imaging. CONCLUSION: MCA can be used to separate the impedivity of SF and muscle tissues from sEIM data, thus increasing the sensitivity to detect changes in the muscle. SIGNIFICANCE: MCA can make the sEIM technique a better diagnostic tool and biomarker of disease progression and response to therapy by removing the confounding effect of SF tissue in NMD patients with excess subcutaneous fat tissue for any reason.
OBJECTIVE: Electrical impedance myography (EIM) is a relatively new technique to assess neuromuscular disorders (NMD). Although the application of EIM using surface electrodes (sEIM) has been adopted by the neurology community in recent years to evaluate NMD status, sEIM's sensitivity as a biomarker of skeletal muscle condition is impacted by subcutaneous fat (SF) tissue. Here, we develop a method that is able to remove the contribution of SF from sEIM data. METHODS: We evaluate independent component analysis (ICA) and principal component analysis (PCA) for this purpose. Then, we introduce the so-called model component analysis (MCA). All methods are validated with numerical simulations using impedivity data from SF and muscle tissues. The methods are then tested with measurements performed in diseased individuals ( n=3). RESULTS: Simulations demonstrate that MCA is the most accurate method at separating the impedivity of SF and muscle tissues with the accuracy being 99.2%, followed by ICA with 51.4%, and finally PCA with 38.5%. Experimental results from sEIM data measured on the triceps brachii of patients are consistent with muscle grayscale level values obtained using ultrasound imaging. CONCLUSION: MCA can be used to separate the impedivity of SF and muscle tissues from sEIM data, thus increasing the sensitivity to detect changes in the muscle. SIGNIFICANCE: MCA can make the sEIM technique a better diagnostic tool and biomarker of disease progression and response to therapy by removing the confounding effect of SF tissue in NMD patients with excess subcutaneous fat tissue for any reason.
Authors: Benjamin Sanchez; Aliaksandr S Bandarenka; Gerd Vandersteen; Johan Schoukens; Ramon Bragos Journal: Med Eng Phys Date: 2013-04-17 Impact factor: 2.242
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Authors: Seward B Rutkove; James B Caress; Michael S Cartwright; Ted M Burns; Judy Warder; William S David; Namita Goyal; Nicholas J Maragakis; Lora Clawson; Michael Benatar; Sharon Usher; Khema R Sharma; Shiva Gautam; Pushpa Narayanaswami; Elizabeth M Raynor; Mary Lou Watson; Jeremy M Shefner Journal: Amyotroph Lateral Scler Date: 2012-06-07
Authors: Seward B Rutkove; Tom R Geisbush; Aleksandar Mijailovic; Irina Shklyar; Amy Pasternak; Nicole Visyak; Jim S Wu; Craig Zaidman; Basil T Darras Journal: Pediatr Neurol Date: 2014-02-28 Impact factor: 3.372
Authors: Sarbesh R Pandeya; Janice A Nagy; Daniela Riveros; Carson Semple; Rebecca S Taylor; Benjamin Sanchez; Seward B Rutkove Journal: PLoS One Date: 2021-10-29 Impact factor: 3.752