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Computerized Decision Support for Bladder Cancer Treatment Response Assessment in CT Urography: Effect on Diagnostic Accuracy in Multi-Institution Multi-Specialty Study.

Di SunLubomir HadjiiskiAjjai AlvaYousef ZakhariaMonika JoshiHeang-Ping ChanRohan GarjeLauren PomerantzDean ElhagRichard H CohanElaine M CaoiliWesley T KerrKenny H ChaGalina Kirova-NedyalkovaMatthew S DavenportPrasad R ShankarIsaac R FrancisKimberly ShampainNathaniel MeyerDaniel BarkmeierSean WoolenPhillip L PalmbosAlon Z WeizerRavi K SamalaChuan ZhouMartha Matuszak
Published in: Tomography (Ann Arbor, Mich.) (2022)
This observer study investigates the effect of computerized artificial intelligence (AI)-based decision support system (CDSS-T) on physicians' diagnostic accuracy in assessing bladder cancer treatment response. The performance of 17 observers was evaluated when assessing bladder cancer treatment response without and with CDSS-T using pre- and post-chemotherapy CTU scans in 123 patients having 157 pre- and post-treatment cancer pairs. The impact of cancer case difficulty, observers' clinical experience, institution affiliation, specialty, and the assessment times on the observers' diagnostic performance with and without using CDSS-T were analyzed. It was found that the average performance of the 17 observers was significantly improved ( p = 0.002) when aided by the CDSS-T. The cancer case difficulty, institution affiliation, specialty, and the assessment times influenced the observers' performance without CDSS-T. The AI-based decision support system has the potential to improve the diagnostic accuracy in assessing bladder cancer treatment response and result in more consistent performance among all physicians.
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