Use of artificial neural networks in evaluating prognostic factors determining the response to dendritic cells pulsed with PSMA peptides in prostate cancer patients
Gp. Murphy et al., Use of artificial neural networks in evaluating prognostic factors determining the response to dendritic cells pulsed with PSMA peptides in prostate cancer patients, PROSTATE, 42(1), 2000, pp. 67-72
BACKGROUND. Our purpose was to compare the importance of over 22 measuremen
ts used in evaluating the clinical responses of patients with metastatic or
locally recurrent prostate cancer, treated by dendritic cell (DC) infusion
s with prostate-specific membrane antigen (PSMA) peptides.
METHODS. Artificial neural networks (ANNs) were employed for assessment, as
well as the traditional methods of logistic regression.
RESULTS. Twenty-six patients with metastatic disease and 37 patients with l
ocal recurrence were available for evaluation and comparison. ANN evaluatio
n ranked the collective effects of DC infusion, immune responses (CD3(+) ce
lls, CD16(+) cells, zeta chain(+) cells), and cytokines, e.g., IL-6 and PSM
A levels, very highly. Logistic regression identified all of these paramete
rs to some degree, but in a different rank order. Patients with metastases
showed a sharp rate of response secondary to the level of DC infusion, in c
ontrast to those patients with local recurrence, in which it was more gradu
al.
CONCLUSIONS. ANN analysis emphasizes the importance of level of DC infusion
, immune parameters, cytokines, and markers such as PSMA in determining the
response to PSMA peptide immunotherapy. The criteria of response were judg
ed to be correct in 86% of metastatic patients and 83% of locally recurrent
patients evaluated in this study. Prostate 42:67-72, 2000. (C) 2000 Wiley-
Liss, Inc.