Skip to main content
Top
Published in: Digestive Diseases and Sciences 11/2010

01-11-2010 | Original Article

Prediction of Liver Metastases After Gastric Cancer Resection with the Use of Learning Vector Quantization Neural Networks

Authors: Tomaz Jagric, Stojan Potrc, Timotej Jagric

Published in: Digestive Diseases and Sciences | Issue 11/2010

Login to get access

Abstract

Objective

The aim of our study was to determine whether learning vector quantization neural networks could be used to predict liver metastases after a gastric cancer surgery.

Background

The prediction of tumor recurrence is invaluable for tailoring specific treatment and follow-up strategies for gastric cancer patients. At present, it is still impossible to make reliable predictions of tumor progression. The use of complex mathematical models such as neural networks has already been implemented for the study of various pathophysiological mechanisms, but to date they have never been used for predicting liver metastases after gastric cancer resection.

Methods

A total of 213 patients operated for gastric cancer between 1999 and 2005 were included in our study. They were stratified in a model development (140 patients) and validation group (73 patients). With the use of an auxiliary regression network, seven clinicopathological variables were selected to predict liver metastases.

Results

Forty-one patients developed liver metastases (19.2%). The longest follow-up was 2,754 days. Most liver metastases occurred in the first 799 days after discharge. All predictions were compared to actual recurrences with a two by two contingence table. The determined sensitivity and specificity for the development sample were 71 and 96.1%, respectively. The values for the test sample were 66.7 and 97.1%, respectively. The significance of the model was determined using various post-hoc tests, which all confirmed the effectiveness of our model.

Conclusion

The presented model exhibited a high negative predictive value and reasonable high sensitivity for liver metastases. To improve sensitivity, the inclusion of more patients and perhaps biological markers is still necessary.
Literature
1.
go back to reference Vauhkonen M, Vauhkonen H, Sipponen P. Pathology and molecular biology of gastric cancer. Best Pract Res Clin Gastroenterol. 2006;20:651–674.CrossRefPubMed Vauhkonen M, Vauhkonen H, Sipponen P. Pathology and molecular biology of gastric cancer. Best Pract Res Clin Gastroenterol. 2006;20:651–674.CrossRefPubMed
2.
go back to reference Cervantes A, Braun ER, Fidalgo AP, Gonzalez IC. Molecular biology of gastric cancer. Clin Transl Oncol. 2007;9:208–215.CrossRefPubMed Cervantes A, Braun ER, Fidalgo AP, Gonzalez IC. Molecular biology of gastric cancer. Clin Transl Oncol. 2007;9:208–215.CrossRefPubMed
3.
go back to reference Wright PA, Willians GT. Molecular biology and gastric carcinoma. 1993;34:145–147. Wright PA, Willians GT. Molecular biology and gastric carcinoma. 1993;34:145–147.
4.
go back to reference Dicken BJ, Bigam DL, Cass C, Mackey JR, Joy AA, Hamilton SM. Gastric adenocarcinoma. Review and considerations for future directions. Ann Surg. 2005;241:27–39.PubMed Dicken BJ, Bigam DL, Cass C, Mackey JR, Joy AA, Hamilton SM. Gastric adenocarcinoma. Review and considerations for future directions. Ann Surg. 2005;241:27–39.PubMed
5.
go back to reference Chan AOO, Chu KM, Lam SK, et al. Early prediction of tumor recurrence after curative resection of gastric carcinoma by measuring soluble E-cadherin. Cancer. 2005;104:740–745.CrossRefPubMed Chan AOO, Chu KM, Lam SK, et al. Early prediction of tumor recurrence after curative resection of gastric carcinoma by measuring soluble E-cadherin. Cancer. 2005;104:740–745.CrossRefPubMed
6.
go back to reference Marrelli D, De Stefano A, de Manzoni G, Morgagni P, Dileo A, Roviello F. Prediction of recurrence after radical surgery for gastric cancer. Ann Surg. 2005;241:247–255.CrossRefPubMed Marrelli D, De Stefano A, de Manzoni G, Morgagni P, Dileo A, Roviello F. Prediction of recurrence after radical surgery for gastric cancer. Ann Surg. 2005;241:247–255.CrossRefPubMed
7.
go back to reference Marrelli D, Roviello F, De Stefano A, et al. Risk factors for liver metastases after curative surgical procedures for gastric cancer: a prospective study of 208 patients treated with surgical resection. J Am Coll Surg. 2004;198:51–58.CrossRefPubMed Marrelli D, Roviello F, De Stefano A, et al. Risk factors for liver metastases after curative surgical procedures for gastric cancer: a prospective study of 208 patients treated with surgical resection. J Am Coll Surg. 2004;198:51–58.CrossRefPubMed
8.
go back to reference Bollschweiler E, Lubke T, Monig SP, Holscher AH. Evaluation of POSSUM scoring system in patients with gastric cancer undergoing D2-gastrectomy. 2005;5:2–7. Bollschweiler E, Lubke T, Monig SP, Holscher AH. Evaluation of POSSUM scoring system in patients with gastric cancer undergoing D2-gastrectomy. 2005;5:2–7.
9.
go back to reference Lee HJ, Kim YH, Kim WH, et al. Clinicopathological analysis for recurrence of early gastric cancer. Jpn J Clin Oncol. 2003;33:209–214.CrossRefPubMed Lee HJ, Kim YH, Kim WH, et al. Clinicopathological analysis for recurrence of early gastric cancer. Jpn J Clin Oncol. 2003;33:209–214.CrossRefPubMed
10.
go back to reference Yokota T, Saito T, Teshima S, et al. Early and late recurrences after gastrectomy for gastric cancer: a multiple logistic regression analysis. Upsala J Med Sci. 2002;107:17–22.CrossRefPubMed Yokota T, Saito T, Teshima S, et al. Early and late recurrences after gastrectomy for gastric cancer: a multiple logistic regression analysis. Upsala J Med Sci. 2002;107:17–22.CrossRefPubMed
11.
go back to reference Gooi C, Mintchev M. Neural networks: a diagnostic tool for gastric electrical uncoupling? Inf Theor Appl. 2003;11:47–52. Gooi C, Mintchev M. Neural networks: a diagnostic tool for gastric electrical uncoupling? Inf Theor Appl. 2003;11:47–52.
12.
go back to reference Fritsch T, Kraus PH, Pruntek H, Tran-Gia P. Classification of Parkinson rating scale data using a self-organizing neural net. In: IEEE International conference on Neural Networks 1993;93–98. Fritsch T, Kraus PH, Pruntek H, Tran-Gia P. Classification of Parkinson rating scale data using a self-organizing neural net. In: IEEE International conference on Neural Networks 1993;93–98.
13.
go back to reference Pattichis CS, Schizas CN, Middleton LT. Neural network models in EMG diagnosis. IEEE Trans Biomed Eng. 1995;486–496. Pattichis CS, Schizas CN, Middleton LT. Neural network models in EMG diagnosis. IEEE Trans Biomed Eng. 1995;486–496.
14.
go back to reference Allan R, Kinsner W. A study of microscopic images of human breast disease using competitive neural networks. Canadian Conference on Electrical and Computer Engineering 2001. Allan R, Kinsner W. A study of microscopic images of human breast disease using competitive neural networks. Canadian Conference on Electrical and Computer Engineering 2001.
15.
go back to reference Grau JJ, Palmero R, Marmol M, et al. Time-related improvement of survival in resectable gastric cancer: the role of Japanese-style gastrectomy with D2 lymphadenectomy and adjuvant chemotherapy. World J Surg Oncol. 2006;4:53–62.CrossRefPubMed Grau JJ, Palmero R, Marmol M, et al. Time-related improvement of survival in resectable gastric cancer: the role of Japanese-style gastrectomy with D2 lymphadenectomy and adjuvant chemotherapy. World J Surg Oncol. 2006;4:53–62.CrossRefPubMed
16.
go back to reference Kajitani T. Japanese Research Society for the Study of Gastric Cancer: the general rules for gastric cancer study in surgery and pathology. Jpn J Surg. 1981;11:127–145.CrossRefPubMed Kajitani T. Japanese Research Society for the Study of Gastric Cancer: the general rules for gastric cancer study in surgery and pathology. Jpn J Surg. 1981;11:127–145.CrossRefPubMed
17.
go back to reference Nio Y, Tsubono M, Kawabata K, et al. Comparison of survival curves of gastric cancer patients after surgery according to the UICC stage classification and the general rules for gastric cancer study by the Japanese research society for gastric cancer. Ann Surg. 1993;218(1):47–53.CrossRefPubMed Nio Y, Tsubono M, Kawabata K, et al. Comparison of survival curves of gastric cancer patients after surgery according to the UICC stage classification and the general rules for gastric cancer study by the Japanese research society for gastric cancer. Ann Surg. 1993;218(1):47–53.CrossRefPubMed
18.
go back to reference Jagric T. A nonlinear approach to forecasting with leading economic indicators, vol. 7. Stud Nonlinear Dyn Econom. 2003;7(2):1–18. Jagric T. A nonlinear approach to forecasting with leading economic indicators, vol. 7. Stud Nonlinear Dyn Econom. 2003;7(2):1–18.
19.
go back to reference Masters T. Advanced Algorithms for Neural Networks: A C++ Sourcebook. NY: Wiley; 1995. Masters T. Advanced Algorithms for Neural Networks: A C++ Sourcebook. NY: Wiley; 1995.
20.
go back to reference Kohonen T. Self Organization Maps. New York: Springer; 2001. Kohonen T. Self Organization Maps. New York: Springer; 2001.
21.
go back to reference Kohonen T, Hynninen J, Kangas J, Laaksonen J, Torkkola K. Lvq pak: the learning vector quantization program package. 1995. Kohonen T, Hynninen J, Kangas J, Laaksonen J, Torkkola K. Lvq pak: the learning vector quantization program package. 1995.
22.
go back to reference Pratt WK. Digital Image Processing. 2nd ed. NY: Wiley; 1991. Pratt WK. Digital Image Processing. 2nd ed. NY: Wiley; 1991.
23.
go back to reference Rosenfeld A, Kak AC. Digital Picture Processing. London: Academic Press; 1982. Rosenfeld A, Kak AC. Digital Picture Processing. London: Academic Press; 1982.
24.
go back to reference Gonzalez RC, Wints P. Digital Image Processing. London: Addison Wesley; 1987. Gonzalez RC, Wints P. Digital Image Processing. London: Addison Wesley; 1987.
25.
go back to reference Handels H. Medizinische Bildverarbeitung. Stuttgart: BG Teubner; 2000. Handels H. Medizinische Bildverarbeitung. Stuttgart: BG Teubner; 2000.
26.
go back to reference Kohonen T. “The self-organizing map”. Proc IEEE. 1990;1464–1480. Kohonen T. “The self-organizing map”. Proc IEEE. 1990;1464–1480.
27.
go back to reference Schmitz G, Krüger M, Ermert H. “Tissue characterization of the prostate using Kohonen maps”. Proc. 1994 IEEE Ultrasonics Symposium 1994;1487–1490. Schmitz G, Krüger M, Ermert H. “Tissue characterization of the prostate using Kohonen maps”. Proc. 1994 IEEE Ultrasonics Symposium 1994;1487–1490.
28.
go back to reference Rychagov MN, Ilin SV, Masloboev YP. “Neural network tissue identification and characterization using multiplayer perception and Kohonen maps.” In: Humboldtian Conference “Biomedical Sciences-2001,” Moscow (Russia) 2001;25. Rychagov MN, Ilin SV, Masloboev YP. “Neural network tissue identification and characterization using multiplayer perception and Kohonen maps.” In: Humboldtian Conference “Biomedical Sciences-2001,” Moscow (Russia) 2001;25.
29.
go back to reference Ilin SV, Rychagov MN. “Segmentation of ultrasonic images by using neural networks of backward propagation”. In Proc. Nizhnij Novgorod Acoust. Scientific Session, Nizhnij Novgorod (Russia), pp. 404–406, 2002 (in Russian). Ilin SV, Rychagov MN. “Segmentation of ultrasonic images by using neural networks of backward propagation”. In Proc. Nizhnij Novgorod Acoust. Scientific Session, Nizhnij Novgorod (Russia), pp. 404–406, 2002 (in Russian).
31.
go back to reference Kohonen T. Analysis of a simple self-organizing process. Biol Cybern. 1982;44(2):135–140.CrossRef Kohonen T. Analysis of a simple self-organizing process. Biol Cybern. 1982;44(2):135–140.CrossRef
32.
go back to reference Kohonen T. Self-organizing formation of topologically correct feature maps. Biol Cybern. 1982;43(1):59–69.CrossRef Kohonen T. Self-organizing formation of topologically correct feature maps. Biol Cybern. 1982;43(1):59–69.CrossRef
33.
go back to reference Kohonen T. Learning Vector Quantization. Technical Report. Otaniemi: Helsinki Univ. of Tech; 1986. Kohonen T. Learning Vector Quantization. Technical Report. Otaniemi: Helsinki Univ. of Tech; 1986.
34.
go back to reference Kohonen T. Improved versions of learning vector quantization. Int Joint Conf Neural Netw. 1990;1:545–550.CrossRef Kohonen T. Improved versions of learning vector quantization. Int Joint Conf Neural Netw. 1990;1:545–550.CrossRef
35.
go back to reference Kooby DA, Suriawinata A, Klimstra DS, Brennan MF, Karpeh MS. Biologic predictors of survival in node-negative gastric cancer. Ann Surg. 2003;237:828–837.CrossRefPubMed Kooby DA, Suriawinata A, Klimstra DS, Brennan MF, Karpeh MS. Biologic predictors of survival in node-negative gastric cancer. Ann Surg. 2003;237:828–837.CrossRefPubMed
36.
go back to reference Siewert JR, Böttcher K, Stien HJ, Roder JD, The German Gastric Carcinoma Study Group. Relevant prognostic factors in gastric cancer. Ten-Year Results German Gastric Cancer Study. 1998;228:449–461. Siewert JR, Böttcher K, Stien HJ, Roder JD, The German Gastric Carcinoma Study Group. Relevant prognostic factors in gastric cancer. Ten-Year Results German Gastric Cancer Study. 1998;228:449–461.
37.
go back to reference Grisaru DA, Covens A, Franssen E, et al. Histopathologic score predicts recurrence free survival after radical surgery in patients with stage IA2-IB1–2 cervical carcinoma. Cancer. 2003;97:1904–1908.CrossRefPubMed Grisaru DA, Covens A, Franssen E, et al. Histopathologic score predicts recurrence free survival after radical surgery in patients with stage IA2-IB1–2 cervical carcinoma. Cancer. 2003;97:1904–1908.CrossRefPubMed
38.
go back to reference Radespiel-Tröger M, Hohenberger W, Reingruber B. Improved prediction of recurrence after curative resection of colon carcinoma using tree-based risk stratification. Cancer. 2004;100:958–967.CrossRefPubMed Radespiel-Tröger M, Hohenberger W, Reingruber B. Improved prediction of recurrence after curative resection of colon carcinoma using tree-based risk stratification. Cancer. 2004;100:958–967.CrossRefPubMed
39.
go back to reference Yoo CH, Noh SH, Shin DW, et al. Recurrence following curative resection for gastric carcinoma. Br J Surg. 2000;87:236–242.CrossRefPubMed Yoo CH, Noh SH, Shin DW, et al. Recurrence following curative resection for gastric carcinoma. Br J Surg. 2000;87:236–242.CrossRefPubMed
40.
go back to reference Shiraishi N, Inomata M, Osawa N, et al. Early and late recurrence after gastrectomy for gastric carcinoma: univariate and multivariate analyses. Cancer. 2000;89:255–261.CrossRefPubMed Shiraishi N, Inomata M, Osawa N, et al. Early and late recurrence after gastrectomy for gastric carcinoma: univariate and multivariate analyses. Cancer. 2000;89:255–261.CrossRefPubMed
41.
go back to reference Koga S, Takebayashi M, Kaibara N, et al. Pathological characteristics of gastric cancer that develop hematogenous recurrence, with special reference to the site of recurrence. J Surg Oncol. 1987;36:239–242.CrossRefPubMed Koga S, Takebayashi M, Kaibara N, et al. Pathological characteristics of gastric cancer that develop hematogenous recurrence, with special reference to the site of recurrence. J Surg Oncol. 1987;36:239–242.CrossRefPubMed
42.
go back to reference Maehara Y, Emi Y, Baba H, et al. Recurrences and related characteristics of gastric cancer. Br J Cancer. 1996;74:975–979.PubMed Maehara Y, Emi Y, Baba H, et al. Recurrences and related characteristics of gastric cancer. Br J Cancer. 1996;74:975–979.PubMed
43.
go back to reference Kasakura Y, Fujii M, Mochizuki F, et al. Is there a benefit of pancreaticosplenectomy with gastrectomy for advanced gastric cancer? Am J Surg. 2000;179:237–242.CrossRefPubMed Kasakura Y, Fujii M, Mochizuki F, et al. Is there a benefit of pancreaticosplenectomy with gastrectomy for advanced gastric cancer? Am J Surg. 2000;179:237–242.CrossRefPubMed
44.
go back to reference Mori M, Sakaguchi H, Akazawa K, et al. Prognostic significance of CEA, Ca 19–9, and Ca 72–4 preoperative serum levels in gastric carcinoma. Oncology. 1999;57:55–62.CrossRef Mori M, Sakaguchi H, Akazawa K, et al. Prognostic significance of CEA, Ca 19–9, and Ca 72–4 preoperative serum levels in gastric carcinoma. Oncology. 1999;57:55–62.CrossRef
45.
go back to reference Ikeda Y, Mori M, Kajiyama K, et al. Indicative value of carcinoembryonic antigen (CEA) for liver recurrence following curative resection of stage II and III gastric cancer. Hepatogastroenterology. 1996;43:1281–1287.PubMed Ikeda Y, Mori M, Kajiyama K, et al. Indicative value of carcinoembryonic antigen (CEA) for liver recurrence following curative resection of stage II and III gastric cancer. Hepatogastroenterology. 1996;43:1281–1287.PubMed
46.
go back to reference Ichiyoshi Y, Toda T, Minamisona Y, Nagasaki S, Yakeishi Y, Sugimachi K. Recurrence in early gastric cancer. Surgery. 1990;107:489–495.PubMed Ichiyoshi Y, Toda T, Minamisona Y, Nagasaki S, Yakeishi Y, Sugimachi K. Recurrence in early gastric cancer. Surgery. 1990;107:489–495.PubMed
47.
go back to reference Shiozawa N, Kodama M, Chida T, Arakawa A, Tur GE, Koyama K. Recurrent death among early gastric cancer patients: 20-years’ experience. Hepatogastroenterology. 1994;41:244–247.PubMed Shiozawa N, Kodama M, Chida T, Arakawa A, Tur GE, Koyama K. Recurrent death among early gastric cancer patients: 20-years’ experience. Hepatogastroenterology. 1994;41:244–247.PubMed
48.
go back to reference Sano T, Kobori O, Muto T. Lymph node metastasis for early gastric cancer. Br J Surg. 1992;79:241–244.CrossRefPubMed Sano T, Kobori O, Muto T. Lymph node metastasis for early gastric cancer. Br J Surg. 1992;79:241–244.CrossRefPubMed
49.
go back to reference Folli S, Dente M, Dell’Amore D, et al. Early gastric cancer: prognostic factors in 223 patients. Br J Surg. 1995;82:952–956.CrossRefPubMed Folli S, Dente M, Dell’Amore D, et al. Early gastric cancer: prognostic factors in 223 patients. Br J Surg. 1995;82:952–956.CrossRefPubMed
Metadata
Title
Prediction of Liver Metastases After Gastric Cancer Resection with the Use of Learning Vector Quantization Neural Networks
Authors
Tomaz Jagric
Stojan Potrc
Timotej Jagric
Publication date
01-11-2010
Publisher
Springer US
Published in
Digestive Diseases and Sciences / Issue 11/2010
Print ISSN: 0163-2116
Electronic ISSN: 1573-2568
DOI
https://doi.org/10.1007/s10620-010-1155-z

Other articles of this Issue 11/2010

Digestive Diseases and Sciences 11/2010 Go to the issue
Live Webinar | 27-06-2024 | 18:00 (CEST)

Keynote webinar | Spotlight on medication adherence

Live: Thursday 27th June 2024, 18:00-19:30 (CEST)

WHO estimates that half of all patients worldwide are non-adherent to their prescribed medication. The consequences of poor adherence can be catastrophic, on both the individual and population level.

Join our expert panel to discover why you need to understand the drivers of non-adherence in your patients, and how you can optimize medication adherence in your clinics to drastically improve patient outcomes.

Prof. Kevin Dolgin
Prof. Florian Limbourg
Prof. Anoop Chauhan
Developed by: Springer Medicine
Obesity Clinical Trial Summary

At a glance: The STEP trials

A round-up of the STEP phase 3 clinical trials evaluating semaglutide for weight loss in people with overweight or obesity.

Developed by: Springer Medicine

Highlights from the ACC 2024 Congress

Year in Review: Pediatric cardiology

Watch Dr. Anne Marie Valente present the last year's highlights in pediatric and congenital heart disease in the official ACC.24 Year in Review session.

Year in Review: Pulmonary vascular disease

The last year's highlights in pulmonary vascular disease are presented by Dr. Jane Leopold in this official video from ACC.24.

Year in Review: Valvular heart disease

Watch Prof. William Zoghbi present the last year's highlights in valvular heart disease from the official ACC.24 Year in Review session.

Year in Review: Heart failure and cardiomyopathies

Watch this official video from ACC.24. Dr. Biykem Bozkurt discusses last year's major advances in heart failure and cardiomyopathies.