GOAL: Heterogeneity in cancer can affect response to therapy and patient prognosis. Histologic measures have classically been used to measure heterogeneity, although a reliable noninvasive measurement is needed both to establish baseline risk of recurrence and monitor response to treatment. Here, we propose using spatiotemporal wavelet kinetic features from dynamic contrast-enhanced magnetic resonance imaging to quantify intratumor heterogeneity in breast cancer. METHODS: Tumor pixels are first partitioned into homogeneous subregions using pharmacokinetic measures. Heterogeneity wavelet kinetic (HetWave) features are then extracted from these partitions to obtain spatiotemporal patterns of the wavelet coefficients and the contrast agent uptake. The HetWave features are evaluated in terms of their prognostic value using a logistic regression classifier with genetic algorithm wrapper-based feature selection to classify breast cancer recurrence risk as determined by a validated gene expression assay. RESULTS: Receiver operating characteristic analysis and area under the curve (AUC) are computed to assess classifier performance using leave-one-out cross validation. The HetWave features outperform other commonly used features (AUC = 0.88 HetWave versus 0.70 standard features). The combination of HetWave and standard features further increases classifier performance (AUCs 0.94). CONCLUSION: The rate of the spatial frequency pattern over the pharmacokinetic partitions can provide valuable prognostic information. SIGNIFICANCE: HetWave could be a powerful feature extraction approach for characterizing tumor heterogeneity, providing valuable prognostic information.
GOAL: Heterogeneity in cancer can affect response to therapy and patient prognosis. Histologic measures have classically been used to measure heterogeneity, although a reliable noninvasive measurement is needed both to establish baseline risk of recurrence and monitor response to treatment. Here, we propose using spatiotemporal wavelet kinetic features from dynamic contrast-enhanced magnetic resonance imaging to quantify intratumor heterogeneity in breast cancer. METHODS:Tumor pixels are first partitioned into homogeneous subregions using pharmacokinetic measures. Heterogeneity wavelet kinetic (HetWave) features are then extracted from these partitions to obtain spatiotemporal patterns of the wavelet coefficients and the contrast agent uptake. The HetWave features are evaluated in terms of their prognostic value using a logistic regression classifier with genetic algorithm wrapper-based feature selection to classify breast cancer recurrence risk as determined by a validated gene expression assay. RESULTS: Receiver operating characteristic analysis and area under the curve (AUC) are computed to assess classifier performance using leave-one-out cross validation. The HetWave features outperform other commonly used features (AUC = 0.88 HetWave versus 0.70 standard features). The combination of HetWave and standard features further increases classifier performance (AUCs 0.94). CONCLUSION: The rate of the spatial frequency pattern over the pharmacokinetic partitions can provide valuable prognostic information. SIGNIFICANCE: HetWave could be a powerful feature extraction approach for characterizing tumor heterogeneity, providing valuable prognostic information.
Authors: Habib Rahbar; Elizabeth S McDonald; Janie M Lee; Savannah C Partridge; Christoph I Lee Journal: Acad Radiol Date: 2016-03-23 Impact factor: 3.173
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Authors: Jeffrey C Thompson; Stephanie S Yee; Andrea B Troxel; Samantha L Savitch; Ryan Fan; David Balli; David B Lieberman; Jennifer D Morrissette; Tracey L Evans; Joshua Bauml; Charu Aggarwal; John A Kosteva; Evan Alley; Christine Ciunci; Roger B Cohen; Stephen Bagley; Susan Stonehouse-Lee; Victoria E Sherry; Elizabeth Gilbert; Corey Langer; Anil Vachani; Erica L Carpenter Journal: Clin Cancer Res Date: 2016-09-06 Impact factor: 12.531
Authors: Stephanie S Yee; David B Lieberman; Tatiana Blanchard; JulieAnn Rader; Jianhua Zhao; Andrea B Troxel; Daniel DeSloover; Alan J Fox; Robert D Daber; Bijal Kakrecha; Shrey Sukhadia; George K Belka; Angela M DeMichele; Lewis A Chodosh; Jennifer J D Morrissette; Erica L Carpenter Journal: Mol Genet Genomic Med Date: 2016-02-28 Impact factor: 2.183
Authors: J C Haeck; K Bol; C M A de Ridder; L Brunel; J A Fehrentz; J Martinez; W M van Weerden; M R Bernsen; M de Jong; J F Veenland Journal: EJNMMI Res Date: 2016-01-14 Impact factor: 3.138