It has been indicated that total prostate specific antigen (PSA) screening, one of the serum markers used for the diagnosis of prostate cancer, has been clinically beneficial. In this research, it was aimed to estimate the total PSA values by Multilayer Perceptron (MLP) artificial neural network (ANN) model. Data on total PSA values in this study (n = 1422) were randomly selected using the structured query language (SQL) from the database of patients records of Urology Department of Medical School at Inonu University. Total PSA values as a target/dependent variable, and age (year), blood group (A/B/0/AB), Exitus (EX) status (alive/death), Lymphocyte (LY) (%), Hemoglobin (HGB) (g / dL), Neutrophil (NE) (%), Albumin (g / dL), Calcium (mg / dL...
As medical science and technology progress towards the era of “big data”, a multi-dimensional datase...
specific antigen (PSA) is widely used in screening for prostate cancer. Specificity can be improved ...
Background: We developed an artificial neural network (ANN) model to predict prostate cancer patholo...
Context: The majority of prostate cancer diagnoses are facilitated by testing serum Prostate Specifi...
Objective: We examined the efficacy of an artificial neural network analysis (ANNA) based on paramet...
Background: The percentage of free prostate-specific antigen (%fPSA) has been shown to improve speci...
Prostate cancer is that starts in the prostate gland. The prostate is a small, walnut sized structur...
Serum PSA (Prostate Specific Antigen) level is used for prediction of prostatic carcinoma, but it su...
Background: The widespread use of prostate specific antigen (PSA) caused high rate of overdiagnosis....
Abstract Use of percent free PSA (%fPSA) and arti-Wcial neural networks (ANNs) can eliminate unneces...
Ziel: Artifizielle neuronale Netzwerke (ANN) finden verstärkt Anwendung zur Steigerung der Spezifitä...
Prostatic carcinoma is the fifth most common cancer in the world and the second most common in men. ...
Purpose: In majority of patients who are subjected to prostate biopsies, no prostate cancer (PCa) is...
BackgroundProstate-specific antigen (PSA)–based screening for prostate cancer has been widely perfor...
Purpose: To explore the role of artificial intelligence and machine learning (ML) techniques in onco...
As medical science and technology progress towards the era of “big data”, a multi-dimensional datase...
specific antigen (PSA) is widely used in screening for prostate cancer. Specificity can be improved ...
Background: We developed an artificial neural network (ANN) model to predict prostate cancer patholo...
Context: The majority of prostate cancer diagnoses are facilitated by testing serum Prostate Specifi...
Objective: We examined the efficacy of an artificial neural network analysis (ANNA) based on paramet...
Background: The percentage of free prostate-specific antigen (%fPSA) has been shown to improve speci...
Prostate cancer is that starts in the prostate gland. The prostate is a small, walnut sized structur...
Serum PSA (Prostate Specific Antigen) level is used for prediction of prostatic carcinoma, but it su...
Background: The widespread use of prostate specific antigen (PSA) caused high rate of overdiagnosis....
Abstract Use of percent free PSA (%fPSA) and arti-Wcial neural networks (ANNs) can eliminate unneces...
Ziel: Artifizielle neuronale Netzwerke (ANN) finden verstärkt Anwendung zur Steigerung der Spezifitä...
Prostatic carcinoma is the fifth most common cancer in the world and the second most common in men. ...
Purpose: In majority of patients who are subjected to prostate biopsies, no prostate cancer (PCa) is...
BackgroundProstate-specific antigen (PSA)–based screening for prostate cancer has been widely perfor...
Purpose: To explore the role of artificial intelligence and machine learning (ML) techniques in onco...
As medical science and technology progress towards the era of “big data”, a multi-dimensional datase...
specific antigen (PSA) is widely used in screening for prostate cancer. Specificity can be improved ...
Background: We developed an artificial neural network (ANN) model to predict prostate cancer patholo...