Radiotherapy & Oncology
Volume 102, Issue 2 , Pages 239-245, February 2012

Combined PET/CT image characteristics for radiotherapy tumor response in lung cancer

  • Manushka Vaidya

      Affiliations

    • Washington University, Saint Louis, MO, USA
  • ,
  • Kimberly M. Creach

      Affiliations

    • Washington University, Saint Louis, MO, USA
  • ,
  • Jennifer Frye

      Affiliations

    • Washington University, Saint Louis, MO, USA
  • ,
  • Farrokh Dehdashti

      Affiliations

    • Washington University, Saint Louis, MO, USA
  • ,
  • Jeffrey D. Bradley

      Affiliations

    • Washington University, Saint Louis, MO, USA
  • ,
  • Issam El Naqa

      Affiliations

    • Washington University, Saint Louis, MO, USA
    • McGill University, Montreal, QC, Canada
    • Corresponding Author InformationCorresponding author. Address: Medical Physics Unit/Radiation Oncology, McGill University, Montreal, QC, Canada H3G 1A4.

Received 3 May 2011; received in revised form 13 October 2011; accepted 20 October 2011. published online 18 November 2011.

Abstract 

Background and Purpose

Prediction of local failure in radiotherapy patients with non-small cell lung cancer (NSCLC) remains a challenging task. Recent evidence suggests that FDG–PET images can be used to predict outcomes. We investigate an alternative multimodality image-feature approach for predicting post-radiotherapy tumor progression in NSCLC.

Material and methods

We analyzed pre-treatment FDG–PET/CT studies of twenty-seven NSCLC patients for local and loco-regional failures. Thirty-two tumor region features based on SUV or HU, intensity-volume-histogram (IVH) and texture characteristics were extracted. Statistical analysis was performed using Spearman’s correlation (rs) and multivariable logistic regression.

Results

For loco-regional recurrence, IVH variables had the highest univariate association. In PET, IVH-slope reached rs=0.3426 (p=0.0403). Motion correction slightly improved correlation of texture features. In CT, coefficient of variation had the highest association rs=−0.2665 (p=0.0871). Similarly for local failure, a CT-IVH parameter reached rs=0.4530 (p=0.0105). For loco-regional and local failures, a 2-parameter model of PET-V80 and CT-V70 yielded rs=0.4854 (p=0.0067) and rs=0.5908 (p=0.0013), respectively. Addition of dosimetric variables provided improvement in cases of loco-regional but not local failures.

Conclusions

We proposed a feature-based approach to evaluate radiation tumor response. Our study demonstrates that multimodality image-feature modeling provides better performance compared to existing metrics and holds promise for individualizing radiotherapy planning.

Keywords: PET/CT imaging, Pattern recognition, Multimodality analysis, Radiotherapy, Lung cancer outcomes

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PII: S0167-8140(11)00626-8

doi:10.1016/j.radonc.2011.10.014

Radiotherapy & Oncology
Volume 102, Issue 2 , Pages 239-245, February 2012