Table 1 Grade of malignancy (1 = low, 2 = high/intermediate), subjective view of change in symptoms between pretreatment stage (E1) and after first chemotherapy cycle (E2) (0 = unchanged, 1 = relieved). Patient Grade of malignity Symptoms Volume 1 = low 2 = high/intermediate 0 = click here unchanged 1 = relieved NVP-LDE225 mouse E1 (cm3) E2 (cm3) Change% 1 2 1 429 105 -76% 2 2 1 183 64 -65% 3 1 1 173 66 -62% 4 1 1 529 459 -13% 5 1 0 570 419 -26% 6 1
1 800 595 -26% 7 2 1 146 118 -19% 8 2 0 118 80 -32% 9 1 1 367 246 -33% 10 1 0 850 769 -10% 11 2 1 2144 1622 -24% 12 2 1 72 30 -58% 13 2 0 140 52 -63% 14 2 1 274 93 -66% 15 1 1 795 190 -76% 16 1 0 824 797 -3% 17 1 0 750 579 -23% 18 1 0 273 66 -76% 19 1 0 771 522 -32% Results of the volumetric analysis of first (E1) and second imaging stages (E2). Volumes are given in cm3, and the volume change calculated in percentages. Clinical parameters analyses According to the patient’s subjective estimates clinical symptoms between first and second imaging timepoint were unchanged in eight patients and relieved in 11 patients. Grades of malignancy and subjective view on symptoms are presented in Table 1 with volumetry results. Texture data: MaZda and B11 analyses We included in the analyses 108 T1-weighted and 113 T2-weighted images from E1; 103 T1-weighted and 105 T2-weighted images from E2; and 97 T1-weighted images
and 99 T2-weighted images from E3. Texture features were selected with Fisher and POE+ACC methods in MaZda from 300 original parameters calculated ubiquitin-Proteasome degradation Non-specific serine/threonine protein kinase for each of the four subgroups in both image data classes T1- and T2-weighted. We found that the most significant features varied clearly between imaging stages. The whole of 74 TA features ranked first to tenth significant
feature in tested subgroups. There were three histogram parameters, 55 co-occurrence parameters, nine run-length parameters, four absolute gradient parameters and three autoregressive model parameters. No wavelet parameters were placed in the top group. Data analyses RDA, PCA, LDA and NDA show texture changes between imaging points. The analyses did not perform well the task of discriminating all three imaging timepoints (E1, E2, E3) at same time. Slightly better classification was achieved between the first and second examinations, and between the second and third examinations. The method was successful in classifying the textural data achieved from the pre-treatment and third imaging timepoints, the best discrimination was obtained within T2-weighted leading to NDA classification error of 4%, and within T1-weighted NDA 5% error. Classification of different examination stages lead to same level results in T1- and T2-weighted images. The overall classification results are presented in Table 2 and Table 3. Table 2 MaZda classification results – results obtained within T1-weighted images.