Predicting radiotherapy outcomes using statistical learning techniques

被引:48
作者
El Naqa, Issam [1 ]
Bradley, Jeffrey D. [1 ]
Lindsay, Patricia E. [2 ]
Hope, Andrew J. [2 ]
Deasy, Joseph O. [1 ]
机构
[1] Washington Univ, St Louis, MO 63130 USA
[2] Princess Margaret Hosp, Dept Radiat Oncol, Toronto, ON M4X 1K9, Canada
关键词
RADIATION-THERAPY; DOSE-VOLUME; SALIVARY FUNCTION; PROSTATE-CANCER; NEURAL-NETWORK; RISK; PNEUMONITIS; RTOG-9311;
D O I
10.1088/0031-9155/54/18/S02
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Radiotherapy outcomes are determined by complex interactions between treatment, anatomical and patient-related variables. A common obstacle to building maximally predictive outcome models for clinical practice is the failure to capture potential complexity of heterogeneous variable interactions and applicability beyond institutional data. We describe a statistical learning methodology that can automatically screen for nonlinear relations among prognostic variables and generalize to unseen data before. In this work, several types of linear and nonlinear kernels to generate interaction terms and approximate the treatment-response function are evaluated. Examples of institutional datasets of esophagitis, pneumonitis and xerostomia endpoints were used. Furthermore, an independent RTOG dataset was used for 'generalizabilty' validation. We formulated the discrimination between risk groups as a supervised learning problem. The distribution of patient groups was initially analyzed using principle components analysis (PCA) to uncover potential nonlinear behavior. The performance of the different methods was evaluated using bivariate correlations and actuarial analysis. Over-fitting was controlled via cross-validation resampling. Our results suggest that a modified support vector machine (SVM) kernel method provided superior performance on leave-one-out testing compared to logistic regression and neural networks in cases where the data exhibited nonlinear behavior on PCA. For instance, in prediction of esophagitis and pneumonitis endpoints, which exhibited nonlinear behavior on PCA, the method provided 21% and 60% improvements, respectively. Furthermore, evaluation on the independent pneumonitis RTOG dataset demonstrated good generalizabilty beyond institutional data in contrast with other models. This indicates that the prediction of treatment response can be improved by utilizing nonlinear kernel methods for discovering important nonlinear interactions among model variables. These models have the capacity to predict on unseen data.
引用
收藏
页码:S9 / S30
页数:22
相关论文
共 43 条
[11]   Use of principal component analysis to evaluate the partial organ tolerance of normal tissues to radiation [J].
Dawson, LA ;
Biersack, M ;
Lockwood, G ;
Eisbruch, A ;
Lawrence, TS ;
Ten Haken, RK .
INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2005, 62 (03) :829-837
[12]   Increased risk of biochemical and local failure in patients with distended rectum on the planning CT for prostate cancer radiotherapy [J].
De Crevoisier, R ;
Tucker, SL ;
Dong, L ;
Mohan, R ;
Cheung, R ;
Cox, JD ;
Kuban, DA .
INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2005, 62 (04) :965-973
[13]   CERR: A computational environment for radiotherapy research [J].
Deasy, JO ;
Blanco, AI ;
Clark, VH .
MEDICAL PHYSICS, 2003, 30 (05) :979-985
[14]   Methodological issues in radiation dose-volume outcome analyses: Summary of a joint AAPM/NIH workshop [J].
Deasy, JO ;
Niemierko, A ;
Herbert, D ;
Yan, D ;
Jackson, A ;
Ten Haken, RK ;
Langer, M ;
Sapareto, S .
MEDICAL PHYSICS, 2002, 29 (09) :2109-2127
[15]   Multivariable modeling of radiotherapy outcomes, including dose-volume and clinical factors [J].
El Naqa, I ;
Bradley, J ;
Blanco, AI ;
Lindsay, PE ;
Vicic, M ;
Hope, A ;
Deasy, JO .
INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2006, 64 (04) :1275-1286
[16]   Nonlinear Kernel-based Approaches for Predicting Normal Tissue Toxicities [J].
El Naqa, Issam ;
Bradley, Jeffrey D. ;
Deasy, Joseph .
SEVENTH INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS, PROCEEDINGS, 2008, :539-544
[17]   A similarity learning approach to content-based image retrieval: Application to digital mammography [J].
El-Naqa, I ;
Yang, YY ;
Galatsanos, NP ;
Nishikawa, RM ;
Wernick, MN .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2004, 23 (10) :1233-1244
[18]   A support vector machine approach for detection of microcalcifications [J].
El-Naqa, I ;
Yang, YY ;
Wernick, MN ;
Galatsanos, NP ;
Nishikawa, RM .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2002, 21 (12) :1552-1563
[19]  
ELNAQA I, 2005, AAPM S P PHYS CHEM B, P150
[20]   Advances inradiation oncology [J].
Elshaikh, M ;
Lungman, M ;
Ten Haken, R ;
Lichter, AS .
ANNUAL REVIEW OF MEDICINE, 2006, 57 :19-31