The Association Between Heatmap Position and the Diagnostic Accuracy of Artificial Intelligence for Colorectal Polyp Diagnosis

Background/Objectives: Artificial intelligence (AI) algorithms for diagnosing colorectal polyps are emerging but not yet widely used. Trust in AI is lacking and could be improved by visually explainable AI, such as heatmaps. This study aims to investigate the association between heatmap position and...

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Published inCancers Vol. 17; no. 10; p. 1620
Main Authors Thijssen, Ayla, Dehghani, Nikoo, Schrauwen, Ruud W. M., Keulen, Eric T. P., Rondagh, Eveline J. A., van Avesaat, Mark H. P., Soufidi, Khalida, Reumkens, Ankie, Bours, Paul H. A., van der Zander, Quirine E. W., de With, Peter H. N., Winkens, Bjorn, Sommen, Fons van der, Schoon, Erik J.
Format Journal Article
LanguageEnglish
Published Switzerland MDPI AG 10.05.2025
MDPI
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Online AccessGet full text
ISSN2072-6694
2072-6694
DOI10.3390/cancers17101620

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Abstract Background/Objectives: Artificial intelligence (AI) algorithms for diagnosing colorectal polyps are emerging but not yet widely used. Trust in AI is lacking and could be improved by visually explainable AI, such as heatmaps. This study aims to investigate the association between heatmap position and AI accuracy for the endoscopic characterization of colorectal polyps. Methods: Four AI algorithms diagnosed 2133 prospectively collected images of 376 colorectal polyps from two hospitals, using histopathology as the gold standard. Heatmap position was compared to the human-annotated polyp position. Generalized estimating equations were used to assess the association between heatmap position and a correct AI diagnosis. Results: Higher percentages of heatmap covering the colorectal polyp were associated with correct diagnoses in all four algorithms (OR 1.013 [95% CI 1.006–1.019], OR 1.025 [95% CI 1.011–1.039], OR 1.038 [95% CI 1.024–1.053], and OR 1.039 [95% CI 1.020–1.058]—all p < 0.001). A higher percentage of polyp not covered by heatmap was associated with a correct diagnosis of Algorithm 1 (OR 1.006 [95% CI 1.003–1.010], p < 0.001), while in Algorithm 2, a lower percentage was associated with a correct diagnosis (OR 0.992 [95% CI 0.985–1.000], p 0.044). Algorithms 3 and 4 showed negative, but not statistically significant, associations. Conclusions: Higher percentages of heatmap covering the polyp were associated with correct diagnoses of four AI algorithms. This indicates that it is clinically relevant to strive for AI predictions with heatmaps covering as much colorectal polyp tissue as possible. Knowing how to interpret heatmaps could increase trust in AI and, with that, benefit the implementation of AI in clinical practice.
AbstractList Background/Objectives: Artificial intelligence (AI) algorithms for diagnosing colorectal polyps are emerging but not yet widely used. Trust in AI is lacking and could be improved by visually explainable AI, such as heatmaps. This study aims to investigate the association between heatmap position and AI accuracy for the endoscopic characterization of colorectal polyps. Methods: Four AI algorithms diagnosed 2133 prospectively collected images of 376 colorectal polyps from two hospitals, using histopathology as the gold standard. Heatmap position was compared to the human-annotated polyp position. Generalized estimating equations were used to assess the association between heatmap position and a correct AI diagnosis. Results: Higher percentages of heatmap covering the colorectal polyp were associated with correct diagnoses in all four algorithms (OR 1.013 [95% CI 1.006–1.019], OR 1.025 [95% CI 1.011–1.039], OR 1.038 [95% CI 1.024–1.053], and OR 1.039 [95% CI 1.020–1.058]—all p < 0.001). A higher percentage of polyp not covered by heatmap was associated with a correct diagnosis of Algorithm 1 (OR 1.006 [95% CI 1.003–1.010], p < 0.001), while in Algorithm 2, a lower percentage was associated with a correct diagnosis (OR 0.992 [95% CI 0.985–1.000], p 0.044). Algorithms 3 and 4 showed negative, but not statistically significant, associations. Conclusions: Higher percentages of heatmap covering the polyp were associated with correct diagnoses of four AI algorithms. This indicates that it is clinically relevant to strive for AI predictions with heatmaps covering as much colorectal polyp tissue as possible. Knowing how to interpret heatmaps could increase trust in AI and, with that, benefit the implementation of AI in clinical practice.
Artificial intelligence (AI) algorithms for diagnosing colorectal polyps are emerging but not yet widely used. Trust in AI is lacking and could be improved by visually explainable AI, such as heatmaps. This study aims to investigate the association between heatmap position and AI accuracy for the endoscopic characterization of colorectal polyps. Four AI algorithms diagnosed 2133 prospectively collected images of 376 colorectal polyps from two hospitals, using histopathology as the gold standard. Heatmap position was compared to the human-annotated polyp position. Generalized estimating equations were used to assess the association between heatmap position and a correct AI diagnosis. Higher percentages of heatmap covering the colorectal polyp were associated with correct diagnoses in all four algorithms (OR 1.013 [95% CI 1.006-1.019], OR 1.025 [95% CI 1.011-1.039], OR 1.038 [95% CI 1.024-1.053], and OR 1.039 [95% CI 1.020-1.058]-all < 0.001). A higher percentage of polyp not covered by heatmap was associated with a correct diagnosis of Algorithm 1 (OR 1.006 [95% CI 1.003-1.010], < 0.001), while in Algorithm 2, a lower percentage was associated with a correct diagnosis (OR 0.992 [95% CI 0.985-1.000], 0.044). Algorithms 3 and 4 showed negative, but not statistically significant, associations. Higher percentages of heatmap covering the polyp were associated with correct diagnoses of four AI algorithms. This indicates that it is clinically relevant to strive for AI predictions with heatmaps covering as much colorectal polyp tissue as possible. Knowing how to interpret heatmaps could increase trust in AI and, with that, benefit the implementation of AI in clinical practice.
Artificial intelligence (AI) shows great potential to improve the diagnosis of colorectal polyps, precursors of colorectal cancer, during endoscopy. However, AI is not widely used for this purpose yet. Among other things, this is caused by a lack of trust in AI. Explainable AI could increase trust in AI by creating more transparent outcomes. Heatmaps are an example of visually explainable AI. Heatmaps highlight the target area of an image used by the AI algorithm to make a diagnosis. This study aimed to investigate the association between heatmap position and AI accuracy for the diagnosis of colorectal polyps on endoscopic images. The higher the percentage of heatmap covering the colorectal polyp, the better the AI accuracy was in four different AI algorithms. With this knowledge, doctors using AI in colonoscopy know that it is relevant to strive for an AI diagnosis with a heatmap covering as much colorectal polyp tissue as possible.
Artificial intelligence (AI) shows great potential to improve the diagnosis of colorectal polyps, precursors of colorectal cancer, during endoscopy. However, AI is not widely used for this purpose yet. Among other things, this is caused by a lack of trust in AI. Explainable AI could increase trust in AI by creating more transparent outcomes. Heatmaps are an example of visually explainable AI. Heatmaps highlight the target area of an image used by the AI algorithm to make a diagnosis. This study aimed to investigate the association between heatmap position and AI accuracy for the diagnosis of colorectal polyps on endoscopic images. The higher the percentage of heatmap covering the colorectal polyp, the better the AI accuracy was in four different AI algorithms. With this knowledge, doctors using AI in colonoscopy know that it is relevant to strive for an AI diagnosis with a heatmap covering as much colorectal polyp tissue as possible. Background/Objectives: Artificial intelligence (AI) algorithms for diagnosing colorectal polyps are emerging but not yet widely used. Trust in AI is lacking and could be improved by visually explainable AI, such as heatmaps. This study aims to investigate the association between heatmap position and AI accuracy for the endoscopic characterization of colorectal polyps. Methods: Four AI algorithms diagnosed 2133 prospectively collected images of 376 colorectal polyps from two hospitals, using histopathology as the gold standard. Heatmap position was compared to the human-annotated polyp position. Generalized estimating equations were used to assess the association between heatmap position and a correct AI diagnosis. Results: Higher percentages of heatmap covering the colorectal polyp were associated with correct diagnoses in all four algorithms (OR 1.013 [95% CI 1.006–1.019], OR 1.025 [95% CI 1.011–1.039], OR 1.038 [95% CI 1.024–1.053], and OR 1.039 [95% CI 1.020–1.058]—all p < 0.001). A higher percentage of polyp not covered by heatmap was associated with a correct diagnosis of Algorithm 1 (OR 1.006 [95% CI 1.003–1.010], p < 0.001), while in Algorithm 2, a lower percentage was associated with a correct diagnosis (OR 0.992 [95% CI 0.985–1.000], p 0.044). Algorithms 3 and 4 showed negative, but not statistically significant, associations. Conclusions: Higher percentages of heatmap covering the polyp were associated with correct diagnoses of four AI algorithms. This indicates that it is clinically relevant to strive for AI predictions with heatmaps covering as much colorectal polyp tissue as possible. Knowing how to interpret heatmaps could increase trust in AI and, with that, benefit the implementation of AI in clinical practice.
Artificial intelligence (AI) algorithms for diagnosing colorectal polyps are emerging but not yet widely used. Trust in AI is lacking and could be improved by visually explainable AI, such as heatmaps. This study aims to investigate the association between heatmap position and AI accuracy for the endoscopic characterization of colorectal polyps.BACKGROUND/OBJECTIVESArtificial intelligence (AI) algorithms for diagnosing colorectal polyps are emerging but not yet widely used. Trust in AI is lacking and could be improved by visually explainable AI, such as heatmaps. This study aims to investigate the association between heatmap position and AI accuracy for the endoscopic characterization of colorectal polyps.Four AI algorithms diagnosed 2133 prospectively collected images of 376 colorectal polyps from two hospitals, using histopathology as the gold standard. Heatmap position was compared to the human-annotated polyp position. Generalized estimating equations were used to assess the association between heatmap position and a correct AI diagnosis.METHODSFour AI algorithms diagnosed 2133 prospectively collected images of 376 colorectal polyps from two hospitals, using histopathology as the gold standard. Heatmap position was compared to the human-annotated polyp position. Generalized estimating equations were used to assess the association between heatmap position and a correct AI diagnosis.Higher percentages of heatmap covering the colorectal polyp were associated with correct diagnoses in all four algorithms (OR 1.013 [95% CI 1.006-1.019], OR 1.025 [95% CI 1.011-1.039], OR 1.038 [95% CI 1.024-1.053], and OR 1.039 [95% CI 1.020-1.058]-all p < 0.001). A higher percentage of polyp not covered by heatmap was associated with a correct diagnosis of Algorithm 1 (OR 1.006 [95% CI 1.003-1.010], p < 0.001), while in Algorithm 2, a lower percentage was associated with a correct diagnosis (OR 0.992 [95% CI 0.985-1.000], p 0.044). Algorithms 3 and 4 showed negative, but not statistically significant, associations.RESULTSHigher percentages of heatmap covering the colorectal polyp were associated with correct diagnoses in all four algorithms (OR 1.013 [95% CI 1.006-1.019], OR 1.025 [95% CI 1.011-1.039], OR 1.038 [95% CI 1.024-1.053], and OR 1.039 [95% CI 1.020-1.058]-all p < 0.001). A higher percentage of polyp not covered by heatmap was associated with a correct diagnosis of Algorithm 1 (OR 1.006 [95% CI 1.003-1.010], p < 0.001), while in Algorithm 2, a lower percentage was associated with a correct diagnosis (OR 0.992 [95% CI 0.985-1.000], p 0.044). Algorithms 3 and 4 showed negative, but not statistically significant, associations.Higher percentages of heatmap covering the polyp were associated with correct diagnoses of four AI algorithms. This indicates that it is clinically relevant to strive for AI predictions with heatmaps covering as much colorectal polyp tissue as possible. Knowing how to interpret heatmaps could increase trust in AI and, with that, benefit the implementation of AI in clinical practice.CONCLUSIONSHigher percentages of heatmap covering the polyp were associated with correct diagnoses of four AI algorithms. This indicates that it is clinically relevant to strive for AI predictions with heatmaps covering as much colorectal polyp tissue as possible. Knowing how to interpret heatmaps could increase trust in AI and, with that, benefit the implementation of AI in clinical practice.
Audience Academic
Author Soufidi, Khalida
Winkens, Bjorn
Rondagh, Eveline J. A.
Schrauwen, Ruud W. M.
van Avesaat, Mark H. P.
Dehghani, Nikoo
Bours, Paul H. A.
Schoon, Erik J.
Sommen, Fons van der
Thijssen, Ayla
van der Zander, Quirine E. W.
Keulen, Eric T. P.
Reumkens, Ankie
de With, Peter H. N.
AuthorAffiliation 3 Department of Electrical Engineering, Eindhoven University of Technology, 5600 MB Eindhoven, The Netherlands
8 Department of Gastroenterology and Hepatology, Catharina Hospital, Michelangelolaan 2, 5623 EJ Eindhoven, The Netherlands
5 Department of Gastroenterology and Hepatology, Zuyderland Medical Center, Dr. H. van der Hoffplein 1, 6162 AP Sittard-Geleen, The Netherlands
4 Department of Gastroenterology and Hepatology, Bernhoven Hospital, Nistelrodeseweg 10, 5406 PT Uden, The Netherlands
7 CAPHRI, Care and Public Health Research Institute, Maastricht University, 6202 AZ Maastricht, The Netherlands
6 Department of Methodology and Statistics, Maastricht University, 6202 AZ Maastricht, The Netherlands
1 Department of Gastroenterology and Hepatology, Maastricht University Medical Center+, 6202 AZ Maastricht, The Netherlands
2 GROW Research Institute for Oncology and Reproduction, Maastricht University, 6202 AZ Maastricht, The Netherlands
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computer-aided diagnosis
colonoscopy
visually explainable artificial intelligence
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Snippet Background/Objectives: Artificial intelligence (AI) algorithms for diagnosing colorectal polyps are emerging but not yet widely used. Trust in AI is lacking...
Artificial intelligence (AI) algorithms for diagnosing colorectal polyps are emerging but not yet widely used. Trust in AI is lacking and could be improved by...
Artificial intelligence (AI) shows great potential to improve the diagnosis of colorectal polyps, precursors of colorectal cancer, during endoscopy. However,...
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StartPage 1620
SubjectTerms Accuracy
Algorithms
Artificial intelligence
Cancer
Clinical medicine
Colorectal cancer
Colorectal carcinoma
Datasets
Diagnosis
Endoscopy
Medical imaging equipment
Patients
Polyps
Statistical analysis
Tumors
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Title The Association Between Heatmap Position and the Diagnostic Accuracy of Artificial Intelligence for Colorectal Polyp Diagnosis
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