Literature DB >> 29862533

A multiobjective Bayesian networks approach for joint prediction of tumor local control and radiation pneumonitis in nonsmall-cell lung cancer (NSCLC) for response-adapted radiotherapy.

Yi Luo1, Daniel L McShan1, Martha M Matuszak1, Dipankar Ray1, Theodore S Lawrence1, Shruti Jolly1, Feng-Ming Kong2, Randall K Ten Haken1, Issam El Naqa1.   

Abstract

PURPOSE: Individualization of therapeutic outcomes in NSCLC radiotherapy is likely to be compromised by the lack of proper balance of biophysical factors affecting both tumor local control (LC) and side effects such as radiation pneumonitis (RP), which are likely to be intertwined. Here, we compare the performance of separate and joint outcomes predictions for response-adapted personalized treatment planning.
METHODS: A total of 118 NSCLC patients treated on prospective protocols with 32 cases of local progression and 20 cases of RP grade 2 or higher (RP2) were studied. Sixty-eight patients with 297 features before and during radiotherapy were used for discovery and 50 patients were reserved for independent testing. A multiobjective Bayesian network (MO-BN) approach was developed to identify important features for joint LC/RP2 prediction using extended Markov blankets as inputs to develop a BN predictive structure. Cross-validation (CV) was used to guide the MO-BN structure learning. Area under the free-response receiver operating characteristic (AU-FROC) curve was used to evaluate joint prediction performance.
RESULTS: Important features including single nucleotide polymorphisms (SNPs), micro RNAs, pretreatment cytokines, pretreatment PET radiomics together with lung and tumor gEUDs were selected and their biophysical inter-relationships with radiation outcomes (LC and RP2) were identified in a pretreatment MO-BN. The joint LC/RP2 prediction yielded an AU-FROC of 0.80 (95% CI: 0.70-0.86) upon internal CV. This improved to 0.85 (0.75-0.91) with additional two SNPs, changes in one cytokine and two radiomics PET image features through the course of radiotherapy in a during-treatment MO-BN. This MO-BN model outperformed combined single-objective Bayesian networks (SO-BNs) during-treatment [0.78 (0.67-0.84)]. AU-FROC values in the evaluation of the MO-BN and individual SO-BNs on the testing dataset were 0.77 and 0.68 for pretreatment, and 0.79 and 0.71 for during-treatment, respectively.
CONCLUSIONS: MO-BNs can reveal possible biophysical cross-talks between competing radiotherapy clinical endpoints. The prediction is improved by providing additional during-treatment information. The developed MO-BNs can be an important component of decision support systems for personalized response-adapted radiotherapy.
© 2018 American Association of Physicists in Medicine.

Entities:  

Keywords:  joint prediction of LC and RP2; multiobjective Bayesian networks; nonsmall-cell lung cancer; response-adapted radiotherapy

Year:  2018        PMID: 29862533      PMCID: PMC6279602          DOI: 10.1002/mp.13029

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  38 in total

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3.  Unraveling biophysical interactions of radiation pneumonitis in non-small-cell lung cancer via Bayesian network analysis.

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5.  Development of a Fully Cross-Validated Bayesian Network Approach for Local Control Prediction in Lung Cancer.

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Review 1.  Radiomics in Oncological PET Imaging: A Systematic Review-Part 1, Supradiaphragmatic Cancers.

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2.  Evaluating Solid Lung Adenocarcinoma Anaplastic Lymphoma Kinase Gene Rearrangement Using Noninvasive Radiomics Biomarkers.

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3.  Quantum-inspired algorithm for radiotherapy planning optimization.

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Journal:  Med Phys       Date:  2019-11-07       Impact factor: 4.071

Review 4.  Genomics models in radiotherapy: From mechanistic to machine learning.

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5.  Integrating Multiomics Information in Deep Learning Architectures for Joint Actuarial Outcome Prediction in Non-Small Cell Lung Cancer Patients After Radiation Therapy.

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Review 6.  Balancing accuracy and interpretability of machine learning approaches for radiation treatment outcomes modeling.

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10.  Quantum deep reinforcement learning for clinical decision support in oncology: application to adaptive radiotherapy.

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