Deep learning approach of diffusion-weighted imaging as an outcome predictor in laryngeal and hypopharyngeal cancer patients with radiotherapy-related curative treatment: a preliminary study

Objectives This preliminary study aimed to develop a deep learning (DL) model using diffusion-weighted imaging (DWI) and apparent diffusion coefficient (ADC) maps to predict local recurrence and 2-year progression-free survival (PFS) in laryngeal and hypopharyngeal cancer patients treated with vario...

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Veröffentlicht in:European radiology 2022-08, Vol.32 (8), p.5353-5361
Hauptverfasser: Tomita, Hayato, Kobayashi, Tatsuaki, Takaya, Eichi, Mishiro, Sono, Hirahara, Daisuke, Fujikawa, Atsuko, Kurihara, Yoshiko, Mimura, Hidefumi, Kobayashi, Yasuyuki
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container_end_page 5361
container_issue 8
container_start_page 5353
container_title European radiology
container_volume 32
creator Tomita, Hayato
Kobayashi, Tatsuaki
Takaya, Eichi
Mishiro, Sono
Hirahara, Daisuke
Fujikawa, Atsuko
Kurihara, Yoshiko
Mimura, Hidefumi
Kobayashi, Yasuyuki
description Objectives This preliminary study aimed to develop a deep learning (DL) model using diffusion-weighted imaging (DWI) and apparent diffusion coefficient (ADC) maps to predict local recurrence and 2-year progression-free survival (PFS) in laryngeal and hypopharyngeal cancer patients treated with various forms of radiotherapy-related curative therapy. Methods Seventy patients with laryngeal and hypopharyngeal cancers treated by radiotherapy, chemoradiotherapy, or induction-(chemo)radiotherapy were enrolled and divided into training ( N = 49) and test ( N = 21) groups based on presentation timeline. All patients underwent MR before and 4 weeks after the start of radiotherapy. The DL models that extracted imaging features on pre- and intra-treatment DWI and ADC maps were trained to predict the local recurrence within a 2-year follow-up. In the test group, each DL model was analyzed for recurrence prediction. Additionally, the Kaplan-Meier and multivariable Cox regression analyses were performed to evaluate the prognostic significance of the DL models and clinical variables. Results The highest area under the receiver operating characteristics curve and accuracy for predicting the local recurrence in the DL model were 0.767 and 81.0%, respectively, using intra-treatment DWI (DWI intra ). The log-rank test showed that DWI intra was significantly associated with PFS ( p = 0.013). DWI intra was an independent prognostic factor for PFS in multivariate analysis ( p = 0.023). Conclusion DL models using DWI intra may have prognostic value in patients with laryngeal and hypopharyngeal cancers treated by curative radiotherapy. The model-related findings may contribute to determining the therapeutic strategy in the early stage of the treatment. Key Points • Deep learning models using intra-treatment diffusion-weighted imaging have prognostic value in patients with laryngeal and hypopharyngeal cancers treated by curative radiotherapy. • The findings from these models may contribute to determining the therapeutic strategy at the early stage of the treatment.
doi_str_mv 10.1007/s00330-022-08630-9
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Methods Seventy patients with laryngeal and hypopharyngeal cancers treated by radiotherapy, chemoradiotherapy, or induction-(chemo)radiotherapy were enrolled and divided into training ( N = 49) and test ( N = 21) groups based on presentation timeline. All patients underwent MR before and 4 weeks after the start of radiotherapy. The DL models that extracted imaging features on pre- and intra-treatment DWI and ADC maps were trained to predict the local recurrence within a 2-year follow-up. In the test group, each DL model was analyzed for recurrence prediction. Additionally, the Kaplan-Meier and multivariable Cox regression analyses were performed to evaluate the prognostic significance of the DL models and clinical variables. Results The highest area under the receiver operating characteristics curve and accuracy for predicting the local recurrence in the DL model were 0.767 and 81.0%, respectively, using intra-treatment DWI (DWI intra ). The log-rank test showed that DWI intra was significantly associated with PFS ( p = 0.013). DWI intra was an independent prognostic factor for PFS in multivariate analysis ( p = 0.023). Conclusion DL models using DWI intra may have prognostic value in patients with laryngeal and hypopharyngeal cancers treated by curative radiotherapy. The model-related findings may contribute to determining the therapeutic strategy in the early stage of the treatment. Key Points • Deep learning models using intra-treatment diffusion-weighted imaging have prognostic value in patients with laryngeal and hypopharyngeal cancers treated by curative radiotherapy. • The findings from these models may contribute to determining the therapeutic strategy at the early stage of the treatment.</description><identifier>ISSN: 1432-1084</identifier><identifier>ISSN: 0938-7994</identifier><identifier>EISSN: 1432-1084</identifier><identifier>DOI: 10.1007/s00330-022-08630-9</identifier><identifier>PMID: 35201406</identifier><language>eng</language><publisher>Berlin/Heidelberg: Springer Berlin Heidelberg</publisher><subject>Cancer ; Chemoradiotherapy ; Deep learning ; Diagnostic Radiology ; Diffusion ; Diffusion coefficient ; Feature extraction ; Head and Neck ; Imaging ; Internal Medicine ; Interventional Radiology ; Laryngeal cancer ; Medical imaging ; Medical prognosis ; Medicine ; Medicine &amp; Public Health ; Multivariate analysis ; Neuroradiology ; Patients ; Radiation therapy ; Radiology ; Rank tests ; Regression analysis ; Throat cancer ; Ultrasound</subject><ispartof>European radiology, 2022-08, Vol.32 (8), p.5353-5361</ispartof><rights>The Author(s), under exclusive licence to European Society of Radiology 2022</rights><rights>2022. 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Methods Seventy patients with laryngeal and hypopharyngeal cancers treated by radiotherapy, chemoradiotherapy, or induction-(chemo)radiotherapy were enrolled and divided into training ( N = 49) and test ( N = 21) groups based on presentation timeline. All patients underwent MR before and 4 weeks after the start of radiotherapy. The DL models that extracted imaging features on pre- and intra-treatment DWI and ADC maps were trained to predict the local recurrence within a 2-year follow-up. In the test group, each DL model was analyzed for recurrence prediction. Additionally, the Kaplan-Meier and multivariable Cox regression analyses were performed to evaluate the prognostic significance of the DL models and clinical variables. Results The highest area under the receiver operating characteristics curve and accuracy for predicting the local recurrence in the DL model were 0.767 and 81.0%, respectively, using intra-treatment DWI (DWI intra ). The log-rank test showed that DWI intra was significantly associated with PFS ( p = 0.013). DWI intra was an independent prognostic factor for PFS in multivariate analysis ( p = 0.023). Conclusion DL models using DWI intra may have prognostic value in patients with laryngeal and hypopharyngeal cancers treated by curative radiotherapy. The model-related findings may contribute to determining the therapeutic strategy in the early stage of the treatment. 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Methods Seventy patients with laryngeal and hypopharyngeal cancers treated by radiotherapy, chemoradiotherapy, or induction-(chemo)radiotherapy were enrolled and divided into training ( N = 49) and test ( N = 21) groups based on presentation timeline. All patients underwent MR before and 4 weeks after the start of radiotherapy. The DL models that extracted imaging features on pre- and intra-treatment DWI and ADC maps were trained to predict the local recurrence within a 2-year follow-up. In the test group, each DL model was analyzed for recurrence prediction. Additionally, the Kaplan-Meier and multivariable Cox regression analyses were performed to evaluate the prognostic significance of the DL models and clinical variables. Results The highest area under the receiver operating characteristics curve and accuracy for predicting the local recurrence in the DL model were 0.767 and 81.0%, respectively, using intra-treatment DWI (DWI intra ). The log-rank test showed that DWI intra was significantly associated with PFS ( p = 0.013). DWI intra was an independent prognostic factor for PFS in multivariate analysis ( p = 0.023). Conclusion DL models using DWI intra may have prognostic value in patients with laryngeal and hypopharyngeal cancers treated by curative radiotherapy. The model-related findings may contribute to determining the therapeutic strategy in the early stage of the treatment. Key Points • Deep learning models using intra-treatment diffusion-weighted imaging have prognostic value in patients with laryngeal and hypopharyngeal cancers treated by curative radiotherapy. • The findings from these models may contribute to determining the therapeutic strategy at the early stage of the treatment.</abstract><cop>Berlin/Heidelberg</cop><pub>Springer Berlin Heidelberg</pub><pmid>35201406</pmid><doi>10.1007/s00330-022-08630-9</doi><tpages>9</tpages><orcidid>https://orcid.org/0000-0002-7024-3521</orcidid></addata></record>
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subjects Cancer
Chemoradiotherapy
Deep learning
Diagnostic Radiology
Diffusion
Diffusion coefficient
Feature extraction
Head and Neck
Imaging
Internal Medicine
Interventional Radiology
Laryngeal cancer
Medical imaging
Medical prognosis
Medicine
Medicine & Public Health
Multivariate analysis
Neuroradiology
Patients
Radiation therapy
Radiology
Rank tests
Regression analysis
Throat cancer
Ultrasound
title Deep learning approach of diffusion-weighted imaging as an outcome predictor in laryngeal and hypopharyngeal cancer patients with radiotherapy-related curative treatment: a preliminary study
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