Title :
Expectation-maximization-estimation of mixture densities for Electron-Spin-Resonance-analysis of albumin
Author :
Schmidt, Christian ; Krumbiegel, Carsten ; Waterstradt, Katja ; Petznick, Gabriele ; Schäfer, Holger ; Schnurr, Kerstin
Author_Institution :
MedInnovation GmbH, Wildau, Germany
Abstract :
Early diagnosis of human cancer is of crucial importance for successful therapies. Cancer diagnosis via ESR (electron-spin-resonance) spectroscopy of albumin found in human blood provides a new promising approach. The ESR frontend signal processing follows a protocol of our proprietary dasiamobility of molecular structure testpsila (MMS-Test) and provides a real-valued 33-dimensional vector representation per sample, which combines a representative feature set of the binding ability (spin-probes) of albumin under investigation. Classical statistical pattern recognition is then applied to the feature vector, including LDA and EM mixture density estimation, leading to a classification error rate of 14% between the two patient classes dasiahealthypsila and dasiasuspectpsila. The class dasiasuspectpsila includes cancer and other chronic condition. The investigation was performed on a proprietary database of MedInnovation with 1176 cancer and non-cancer patients.
Keywords :
EPR spectroscopy; blood; cancer; expectation-maximisation algorithm; feature extraction; medical signal processing; proteins; signal classification; tumours; vectors; 33-dimensional vector representation; ESR spectroscopy; MMS-test; albumin binding ability; electron spin resonance analysis; expectation-maximization-estimation; feature extraction; human blood; human cancer diagnosis; mixture densities; molecular structure test; signal processing; statistical pattern recognition; Blood; Cancer; Humans; Medical treatment; Paramagnetic resonance; Pattern recognition; Protocols; Signal processing; Spectroscopy; Testing; ESR Spectroscopy; Early Cancer Diagnosis; Expectation Maximization Estimation; Linear Discriminant Analysis; MMS-Test; Mixture Densities;
Conference_Titel :
Genomic Signal Processing and Statistics, 2009. GENSIPS 2009. IEEE International Workshop on
Conference_Location :
Minneapolis, MN
Print_ISBN :
978-1-4244-4761-9
Electronic_ISBN :
978-1-4244-4762-6
DOI :
10.1109/GENSIPS.2009.5174354