A Gemini-based clinical decision support system achieved higher overall NCCN concordance (87.9%) than treating physicians (82.3%) for localized and locally advanced prostate cancer treatment.
Observational (n=198)
No
Does a Gemini-based CDSS improve concordance with NCCN guidelines compared to real-world physician decisions in patients with localized and locally advanced prostate cancer?
An AI-based clinical decision support system demonstrated higher concordance with NCCN guidelines for prostate cancer treatment than treating physicians, particularly by reducing potential overtreatment and appropriately recommending active surveillance.
Tasa de eventos absoluta: 87.9% vs 82.3%
1605 Background: Clinical decision support systems (CDSS) based on large language models may improve adherence to evidence-based guidelines in prostate cancer. We developed a Gemini-based CDSS for localized and locally advanced prostate cancer treatment at Instituto do Câncer do Ceará (ICC), Fortaleza, Brazil, and conducted a validation study comparing its recommendations with National Comprehensive Cancer Network (NCCN) guidelines and real-world physician decisions. Methods: We retrospectively included 198 consecutive patients prostate cancer treated at ICC. For each case, the CDSS generated a recommended primary treatment. Independent clinician reviewers assigned reference NCCN-concordant treatment categories. We calculated per-treatment precision, recall, F1-score, and one-vs-rest AUC comparing CDSS and physicians, with particular focus on active surveillance (AS) and radical prostatectomy (RP). Results: Overall NCCN concordance was 87.9% for the CDSS and 82.3% for physicians. Treatment-level analysis showed that the CDSS more often and more accurately identified candidates for active surveillance. For AS, the CDSS achieved precision 1.00, recall 1.00, F1-score 1.00, and AUC 1.00, while physicians had precision 1.00 but substantially lower recall (0.24), F1-score 0.39, and AUC 0.62. In contrast, physicians more frequently recommended RP beyond NCCN indications: for prostatectomy, the CDSS showed precision 1.00, recall 1.00, F1-score 1.00, and AUC 1.00, whereas physicians had lower precision (0.40) with recall 1.00, F1-score 0.58, and AUC 0.90. Conclusions: In this single-center validation study, a Gemini-based CDSS for prostate cancer treatment achieved higher overall NCCN concordance than treating physicians and improved alignment with guidelines for the appropriate use of AS. These findings suggest that integration of large language model–based CDSS into clinical workflows at cancer centers in low- and middle-income settings may reduce overtreatment and support more value-based prostate cancer care. Although we did not include data on social impossibility of AS, the finding leads to reflections on the possibility of greater use of AS, even in a region with limited resources. Performance of a Gemini-based clinical decision support system vs physicians for active surveillance and radical prostatectomy (NCCN-concordant treatment metrics). Treatment modality Metric CDSS (Gemini-based) Physicians Active surveillance (VA) Precision 1.00 1.00 Active surveillance (VA) Recall 1.00 0.24 Active surveillance (VA) F1-score 1.00 0.39 Active surveillance (VA) AUC 1.00 0.62 Radical prostatectomy (P) Precision 1.00 0.40 Radical prostatectomy (P) Recall 1.00 1.00 Radical prostatectomy (P) F1-score 1.00 0.58 Radical prostatectomy (P) AUC 1.00 0.90
Juaçaba et al. (Wed,) conducted a observational in Localized and locally advanced prostate cancer (n=198). Gemini-based clinical decision support system (CDSS) vs. Real-world physician decisions was evaluated on Overall NCCN concordance. A Gemini-based clinical decision support system achieved higher overall NCCN concordance (87.9%) than treating physicians (82.3%) for localized and locally advanced prostate cancer treatment.