statistical classification strategy for proton magnetic resonance spectra of soft tissue sarcoma: an exploratory study with potential clinical utility

statistical classification strategy for proton magnetic resonance spectra of soft tissue sarcoma: an exploratory study with potential clinical utility

;Tedros Bezabeh;Samy El-Sayed;Rakesh Patel;Ray L. Somorjai;Vivien Bramwell;Rita Kandel;Ian C. P. Smith
the journal of physiology 2002 Vol. 6 pp. 97-103
146
bezabeh2002sarcomastatistical

Abstract

Purpose: Histological grading is currently one of the best predictors of tumor behavior and outcome in soft tissue sarcoma. However, occasionally there is significant disagreement even among expert pathologists. An alternative method that gives more reliable and non-subjective diagnostic information is needed. The potential use of proton magnetic resonance spectroscopy in combination with an appropriate statistical classification strategy was tested here in differentiating normal mesenchymal tissue from soft tissue sarcoma.

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