NEURAL-NETWORK ANALYSIS OF QUANTITATIVE HISTOLOGICAL FACTORS TO PREDICT PATHOLOGICAL STAGE IN CLINICAL STAGE-I NONSEMINOMATOUS TESTICULAR CANCER

被引:29
作者
MOUL, JW
SNOW, PB
FERNANDEZ, EB
MAHER, PD
SESTERHENN, IA
机构
[1] WALTER REED ARMY MED CTR,DEPT CLIN INVEST,WASHINGTON,DC 20307
[2] KAMAN SCI CORP,COLORADO SPRINGS,CO
[3] ARMED FORCES INST PATHOL,DEPT GENITOURINARY PATHOL,WASHINGTON,DC 20306
关键词
TESTICULAR NEOPLASMS; NEURAL NETWORKS; COMPUTER;
D O I
10.1016/S0022-5347(01)67502-5
中图分类号
R5 [内科学]; R69 [泌尿科学(泌尿生殖系疾病)];
学科分类号
1002 ; 100201 ;
摘要
A great deal of controversy exists in staging clinical stage I (CSI) nonseminomatous testicular germ cell tumors (NSGCT) because of the difficulty of distinguishing true stage I patients from those with occult retroperitoneal or distant metastases. The goal of this study was to quantitate primary tumor histologic factors and to apply these in a neural network computer analysis to determine if more accurate staging could be achieved. All available primary tumor histological slides from 93 CSI NSGCT patients were analyzed for vascular invasion (VI), lymphatic invasion (LI), tunical invasion (TI) and quantitative determination of percentage of the primary tumor composed of embryonal carcinoma (%EMB), yolk sac carcinoma (%YS), teratoma (%TER) and seminoma (%SEM). These patients had undergone retroperitoneal lymphadenectomy or follow-up such that final stage included 55 pathologic stage I and 38 stage II or higher lesions. Two investigators were provided identical datasets for neural network analysis; one experienced researcher used custom Kohonen and back propagation programs and one less experienced researcher used a commercially available program. For each experiment, a subset of data was used for training, and subsets were blindly used to test the accuracy of the networks. In the custom back propagation network, 86 of 93 patients were correctly staged for an overall accuracy of 92% (sensitivity 88%, specificity 96%). Using Neural Ware commercial software 74 of 93 (79.6%) were accurately staged when all 7 input variables were used; however, accuracy improved from 84.9 to 87.1% when 2, 4 and 5 of the variables were used. Quantitative histologic assessment of the primary tumor and neural network processing of data may provide clinically useful information in the CSI NSGCT population; however, the expertise of the network researcher appears to be important, and commercial software in general use may not be superior to standard regression analysis. Prospective testing of expert methodology should be instituted to confirm its utility.
引用
收藏
页码:1674 / 1677
页数:4
相关论文
共 41 条
[1]  
ALLHOFF E P, 1991, Journal of Urology, V145, p367A
[2]   POTENTIAL USEFULNESS OF AN ARTIFICIAL NEURAL NETWORK FOR DIFFERENTIAL-DIAGNOSIS OF INTERSTITIAL LUNG-DISEASES - PILOT-STUDY [J].
ASADA, N ;
DOI, K ;
MACMAHON, H ;
MONTNER, SM ;
GIGER, ML ;
ABE, C ;
WU, YZ .
RADIOLOGY, 1990, 177 (03) :857-860
[3]  
ASTION ML, 1992, CLIN CHEM, V38, P34
[4]  
ASTION ML, 1992, ARCH PATHOL LAB MED, V116, P995
[5]  
BARTOO GT, 1992, LAB INVEST, V66, P116
[6]   ANALYSIS OF THE CLINICAL-VARIABLES DRIVING DECISION IN AN ARTIFICIAL NEURAL NETWORK TRAINED TO IDENTIFY THE PRESENCE OF MYOCARDIAL-INFARCTION [J].
BAXT, WG .
ANNALS OF EMERGENCY MEDICINE, 1992, 21 (12) :1439-1444
[7]   USE OF AN ARTIFICIAL NEURAL NETWORK FOR THE DIAGNOSIS OF MYOCARDIAL-INFARCTION [J].
BAXT, WG .
ANNALS OF INTERNAL MEDICINE, 1991, 115 (11) :843-848
[8]  
BAXT WG, 1992, NEURAL COMPUT, V2, P480
[9]   NEURAL NETWORKS IN RADIOLOGY - AN INTRODUCTION AND EVALUATION IN A SIGNAL-DETECTION TASK [J].
BOONE, JM ;
SIGILLITO, VG ;
SHABER, GS .
MEDICAL PHYSICS, 1990, 17 (02) :234-241
[10]   A COMPARISON OF NEURAL NETWORK AND OTHER PATTERN-RECOGNITION APPROACHES TO THE DIAGNOSIS OF LOW-BACK DISORDERS [J].
BOUNDS, DG ;
LLOYD, PJ ;
MATHEW, BG .
NEURAL NETWORKS, 1990, 3 (05) :583-591