Abnormality detection in soft tissues: multivariate outlier framework based on multi-mechanical characterization using indentation.
2/5 보강
TL;DR
Instrumented indentation is investigated as a tool for detecting tumor-mimicking nodules embedded within porcine liver tissue models and reliably identifies stiff nodules within one to two standard deviations, offering a promising, clinically relevant method for soft tissue cancer detection.
OpenAlex 토픽 ·
Advanced Sensor and Energy Harvesting Materials
Elasticity and Material Modeling
Anomaly Detection Techniques and Applications
Instrumented indentation is investigated as a tool for detecting tumor-mimicking nodules embedded within porcine liver tissue models and reliably identifies stiff nodules within one to two standard de
APA
Mahmood A. Saleh, Calum Anderson, et al. (2026). Abnormality detection in soft tissues: multivariate outlier framework based on multi-mechanical characterization using indentation.. Medical engineering & physics, 147(5). https://doi.org/10.1088/1873-4030/ae55a1
MLA
Mahmood A. Saleh, et al.. "Abnormality detection in soft tissues: multivariate outlier framework based on multi-mechanical characterization using indentation.." Medical engineering & physics, vol. 147, no. 5, 2026.
PMID
41871469 ↗
Abstract 한글 요약
Fast and accurate detection of abnormalities, such as tumor nodules, in soft tissue is a critical step toward effective cancer diagnosis. Clinical examples include the use of tactile feedback during digital rectal examination for prostate cancer screening and intraoperative tumor localization. However, the absence of robust mechanical characterization and detection methods limits the clinical applicability of these techniques. In this study, we investigate instrumented indentation as a tool for detecting tumor-mimicking nodules embedded within porcine liver tissue models. Multi-mechanical characterization, including hyperelasticity, viscoelasticity, and dynamic indentation, was performed to capture the mechanical response of the tissue at different points across its surface. A multivariate statistical outlier detection approach, based on Mahalanobis distance, was applied to assess the effectiveness of different mechanical metrics in identifying embedded nodules. The results demonstrate that this outlier detection framework reliably identifies stiff nodules within one to two standard deviations, offering a promising, clinically relevant method for soft tissue cancer detection.
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