Literature DB >> 21603313

Cancer prognosis using support vector regression in imaging modality.

Xian Du1, Sumeet Dua.   

Abstract

The proposed techniques investigate the strength of support vector regression (SVR) in cancer prognosis using imaging features. Cancer image features were extracted from patients and recorded into censored data. To employ censored data for prognosis, SVR methods are needed to be adapted to uncertain targets. The effectiveness of two principle breast features, tumor size and lymph node status, was demonstrated by the combination of sampling and feature selection methods. In sampling, breast data were stratified according to tumor size and lymph node status. Three types of feature selection methods comprised of no selection, individual feature selection, and feature subset forward selection, were employed. The prognosis results were evaluated by comparative study using the following performance metrics: concordance index (CI) and Brier score (BS). Cox regression was employed to compare the results. The support vector regression method (SVCR) performs similarly to Cox regression in three feature selection methods and better than Cox regression in non-feature selection methods measured by CI and BS. Feature selection methods can improve the performance of Cox regression measured by CI. Among all cross validation results, stratified sampling of tumor size achieves the best regression results for both feature selection and non-feature selection methods. The SVCR regression results, perform better than Cox regression when the techniques are used with either CI or BS. The best CI value in the validation results is 0.6845. The best CI value corresponds to the best BS value 0.2065, which were obtained in the combination of SVCR, individual feature selection, and stratified sampling of the number of positive lymph nodes. In addition, we also observe that SVCR performs more consistently than Cox regression in all prognosis studies. The feature selection method does not have a significant impact on the metric values, especially on CI. We conclude that the combinational methods of SVCR, feature selection, and sampling can improve cancer prognosis, but more significant features may further enhance cancer prognosis accuracy.

Entities:  

Keywords:  Breast cancer imaging; Cancer prognosis; Sampling; Support vector regression

Year:  2011        PMID: 21603313      PMCID: PMC3095462          DOI: 10.5306/wjco.v2.i1.44

Source DB:  PubMed          Journal:  World J Clin Oncol        ISSN: 2218-4333


  9 in total

1.  Assessment and comparison of prognostic classification schemes for survival data.

Authors:  E Graf; C Schmoor; W Sauerbrei; M Schumacher
Journal:  Stat Med       Date:  1999 Sep 15-30       Impact factor: 2.373

2.  Survival in breast cancer cases in relation to the structure of the primary tumor and regional lymph nodes.

Authors:  M M BLACK; S R OPLER; F D SPEER
Journal:  Surg Gynecol Obstet       Date:  1955-05

3.  Predicting survival from microarray data--a comparative study.

Authors:  H M Bøvelstad; S Nygård; H L Størvold; M Aldrin; Ø Borgan; A Frigessi; O C Lingjaerde
Journal:  Bioinformatics       Date:  2007-06-06       Impact factor: 6.937

4.  Revision of the American Joint Committee on Cancer staging system for breast cancer.

Authors:  S Eva Singletary; Craig Allred; Pandora Ashley; Lawrence W Bassett; Donald Berry; Kirby I Bland; Patrick I Borgen; Gary Clark; Stephen B Edge; Daniel F Hayes; Lorie L Hughes; Robert V P Hutter; Monica Morrow; David L Page; Abram Recht; Richard L Theriault; Ann Thor; Donald L Weaver; H Samuel Wieand; Frederick L Greene
Journal:  J Clin Oncol       Date:  2002-09-01       Impact factor: 44.544

5.  Outcome of extensive evaluation before adjuvant therapy in women with breast cancer and 10 or more positive axillary lymph nodes.

Authors:  M Crump; P E Goss; M Prince; C Girouard
Journal:  J Clin Oncol       Date:  1996-01       Impact factor: 44.544

6.  Imaging in breast cancer - breast cancer imaging revisited.

Authors:  David Mankoff
Journal:  Breast Cancer Res       Date:  2005-11-29       Impact factor: 6.466

Review 7.  Current and future technologies for breast cancer imaging.

Authors:  J P Basilion
Journal:  Breast Cancer Res       Date:  2001       Impact factor: 6.466

8.  Applications of machine learning in cancer prediction and prognosis.

Authors:  Joseph A Cruz; David S Wishart
Journal:  Cancer Inform       Date:  2007-02-11

Review 9.  Imaging and cancer: a review.

Authors:  Leonard Fass
Journal:  Mol Oncol       Date:  2008-05-10       Impact factor: 7.449

  9 in total
  4 in total

1.  Imaging as a diagnostic and therapeutic tool in clinical oncology.

Authors:  Eddie Yin-Kwee Ng; Rajendra U Acharya
Journal:  World J Clin Oncol       Date:  2011-04-10

2.  Support vector regression algorithm modeling to predict the parturition date of small - to medium-sized dogs using maternal weight and fetal biparietal diameter.

Authors:  Thanida Sananmuang; Kanchanarat Mankong; Suppawiwat Ponglowhapan; Kaj Chokeshaiusaha
Journal:  Vet World       Date:  2021-04-02

3.  Survival Prediction and Feature Selection in Patients with Breast Cancer Using Support Vector Regression.

Authors:  Shahrbanoo Goli; Hossein Mahjub; Javad Faradmal; Hoda Mashayekhi; Ali-Reza Soltanian
Journal:  Comput Math Methods Med       Date:  2016-11-01       Impact factor: 2.238

4.  Identification and characterization of the lncRNA signature associated with overall survival in patients with neuroblastoma.

Authors:  Srinivasulu Yerukala Sathipati; Divya Sahu; Hsuan-Cheng Huang; Yenching Lin; Shinn-Ying Ho
Journal:  Sci Rep       Date:  2019-03-26       Impact factor: 4.379

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.