Deep learning-based classification of blue light cystoscopy imaging during transurethral resection of bladder tumors

GND
1228159424
ORCID
0000-0001-5213-9651
Zugehörigkeit
Institute of Physical Chemistry and Abbe Center of Photonics (IPC), Friedrich-Schiller-University, Jena, Germany
Ali, Nairveen;
Zugehörigkeit
Department of Urology, University of Ulm, Ulm, Germany
Bolenz, Christian;
Zugehörigkeit
Department of Urology, University Hospital Tübingen, Tübingen, Germany
Todenhöfer, Tilman;
Zugehörigkeit
Department of Urology, University Hospital Tübingen, Tübingen, Germany
Stenzel, Arnulf;
Zugehörigkeit
Pathology Munich-Nord, Munich, Germany
Deetmar, Peer;
Zugehörigkeit
Urological Hospital Munich-Planegg, Munich, Germany
Kriegmair, Martin;
Zugehörigkeit
Department of Urology, Hospital Sindelfingen-Böblingen, University of Tübingen, Sindelfingen, Germany
Knoll, Thomas;
Zugehörigkeit
Institute of Pathology, University Medical Center of the Johannes Gutenberg University Mainz, Mainz, Germany
Porubsky, Stefan;
Zugehörigkeit
Institute of Pathology, University of Erlangen, Erlangen, Germany
Hartmann, Arndt;
GND
131701819
ORCID
0000-0003-4257-593X
Zugehörigkeit
Institute of Physical Chemistry and Abbe Center of Photonics (IPC), Friedrich-Schiller-University, Jena, Germany
Popp, Jürgen;
Zugehörigkeit
Department of Urology, University Medical Centre Mannheim, Mannheim, Germany
Kriegmair, Maximilian C.;
GND
101788207X
ORCID
0000-0003-2778-6624
Zugehörigkeit
Institute of Physical Chemistry and Abbe Center of Photonics (IPC), Friedrich-Schiller-University, Jena, Germany
Bocklitz, Thomas

Bladder cancer is one of the top 10 frequently occurring cancers and leads to most cancer deaths worldwide. Recently, blue light (BL) cystoscopy-based photodynamic diagnosis was introduced as a unique technology to enhance the detection of bladder cancer, particularly for the detection of flat and small lesions. Here, we aim to demonstrate a BL image-based artificial intelligence (AI) diagnostic platform using 216 BL images, that were acquired in four different urological departments and pathologically identified with respect to cancer malignancy, invasiveness, and grading. Thereafter, four pre-trained convolution neural networks were utilized to predict image malignancy, invasiveness, and grading. The results indicated that the classification sensitivity and specificity of malignant lesions are 95.77% and 87.84%, while the mean sensitivity and mean specificity of tumor invasiveness are 88% and 96.56%, respectively. This small multicenter clinical study clearly shows the potential of AI based classification of BL images allowing for better treatment decisions and potentially higher detection rates.

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