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Interactive web application for Explainable DNN-based AI models in oncology
The lack of interpretability of Deep Neural Network-based Artificial Intelligence (AI) models prevents their utilization in healthcare, despite the exhibited huge success of Deep Neural Networks (DNNs) in Computer Vision and Bioinformatics. The development of such high performing DNN models that are...
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creator | Paneta, V. Brocki, L. Eleftheriadis, V. Papadimitroulas, P. Chung, N. C. |
description | The lack of interpretability of Deep Neural Network-based Artificial Intelligence (AI) models prevents their utilization in healthcare, despite the exhibited huge success of Deep Neural Networks (DNNs) in Computer Vision and Bioinformatics. The development of such high performing DNN models that are explainable and visualized on a web application is presented in this study, to contribute to the acceptance and implementation of DNN-based AI models in the field of medical imaging and oncology in clinical practice. Clinicians can interact with the developed model altering its features, that are meaningful to them, and gradually understand, verify/evaluate the model behavior and the underlying prediction mechanism, and eventually trust it. More specifically, the model in our proof-of-concept app uses segmented thoracic computed tomography images as input and demonstrates excellent performance for lung nodule malignancy classification with inherent interpretability and interactivity. It integrates DNN-predicted tumor biomarkers from a concept bottleneck model and clinically validated expert-derived radiomics features. Feedback from clinicians on model evaluation using our app will highly contribute to further improving of both the algorithms and the interactive environment. |
doi_str_mv | 10.1109/NSSMICRTSD49126.2023.10338566 |
format | conference_proceeding |
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More specifically, the model in our proof-of-concept app uses segmented thoracic computed tomography images as input and demonstrates excellent performance for lung nodule malignancy classification with inherent interpretability and interactivity. It integrates DNN-predicted tumor biomarkers from a concept bottleneck model and clinically validated expert-derived radiomics features. 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Clinicians can interact with the developed model altering its features, that are meaningful to them, and gradually understand, verify/evaluate the model behavior and the underlying prediction mechanism, and eventually trust it. More specifically, the model in our proof-of-concept app uses segmented thoracic computed tomography images as input and demonstrates excellent performance for lung nodule malignancy classification with inherent interpretability and interactivity. It integrates DNN-predicted tumor biomarkers from a concept bottleneck model and clinically validated expert-derived radiomics features. Feedback from clinicians on model evaluation using our app will highly contribute to further improving of both the algorithms and the interactive environment.</description><subject>Artificial neural networks</subject><subject>Biological system modeling</subject><subject>Computational modeling</subject><subject>Oncology</subject><subject>Predictive models</subject><subject>Semiconductor detectors</subject><subject>Visualization</subject><issn>2577-0829</issn><isbn>9798350338669</isbn><fulltext>true</fulltext><rsrctype>conference_proceeding</rsrctype><creationdate>2023</creationdate><recordtype>conference_proceeding</recordtype><sourceid>6IE</sourceid><recordid>eNo1j8tKw0AYRkdBsNa-gYvZuEycayazLGnVYI1gsi9z-SMj0yQkQe3bW1FXh-8sPjgI3VKSUkr0XVXXz2Xx2tQboSnLUkYYTynhPJdZdoZWWumcy5-dZfocLZhUKiE505foapreCWGEC7FAT2U3w2jcHD4Af4LFZhhicGYOfYfbfsTbryGa0BkbAW-qKrFmAo_XJT70HuKEQ4f7zvWxfzteo4vWxAlWf1yi5n7bFI_J7uWhLNa7JAhNEm-ocNwqJ6lXPrOg-EnIlplc5NJrJh0IBpQowamVivnWOutOwghBW8uX6Ob3NgDAfhjDwYzH_X87_wbrqFBY</recordid><startdate>20231104</startdate><enddate>20231104</enddate><creator>Paneta, V.</creator><creator>Brocki, L.</creator><creator>Eleftheriadis, V.</creator><creator>Papadimitroulas, P.</creator><creator>Chung, N. 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C.</creatorcontrib><collection>IEEE Electronic Library (IEL) Conference Proceedings</collection><collection>IEEE Proceedings Order Plan (POP) 1998-present by volume</collection><collection>IEEE Xplore All Conference Proceedings</collection><collection>IEEE/IET Electronic Library</collection><collection>IEEE Proceedings Order Plans (POP) 1998-present</collection></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext_linktorsrc</fulltext></delivery><addata><au>Paneta, V.</au><au>Brocki, L.</au><au>Eleftheriadis, V.</au><au>Papadimitroulas, P.</au><au>Chung, N. C.</au><format>book</format><genre>proceeding</genre><ristype>CONF</ristype><atitle>Interactive web application for Explainable DNN-based AI models in oncology</atitle><btitle>2023 IEEE Nuclear Science Symposium, Medical Imaging Conference and International Symposium on Room-Temperature Semiconductor Detectors (NSS MIC RTSD)</btitle><stitle>NSS MIC RTSD</stitle><date>2023-11-04</date><risdate>2023</risdate><spage>1</spage><epage>1</epage><pages>1-1</pages><eissn>2577-0829</eissn><eisbn>9798350338669</eisbn><abstract>The lack of interpretability of Deep Neural Network-based Artificial Intelligence (AI) models prevents their utilization in healthcare, despite the exhibited huge success of Deep Neural Networks (DNNs) in Computer Vision and Bioinformatics. The development of such high performing DNN models that are explainable and visualized on a web application is presented in this study, to contribute to the acceptance and implementation of DNN-based AI models in the field of medical imaging and oncology in clinical practice. Clinicians can interact with the developed model altering its features, that are meaningful to them, and gradually understand, verify/evaluate the model behavior and the underlying prediction mechanism, and eventually trust it. More specifically, the model in our proof-of-concept app uses segmented thoracic computed tomography images as input and demonstrates excellent performance for lung nodule malignancy classification with inherent interpretability and interactivity. It integrates DNN-predicted tumor biomarkers from a concept bottleneck model and clinically validated expert-derived radiomics features. 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identifier | EISSN: 2577-0829 |
ispartof | 2023 IEEE Nuclear Science Symposium, Medical Imaging Conference and International Symposium on Room-Temperature Semiconductor Detectors (NSS MIC RTSD), 2023, p.1-1 |
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language | eng |
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source | IEEE Xplore All Conference Series |
subjects | Artificial neural networks Biological system modeling Computational modeling Oncology Predictive models Semiconductor detectors Visualization |
title | Interactive web application for Explainable DNN-based AI models in oncology |
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