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机器学习预测穿刺活检与根治性前列腺切除术后病理检查之间的Gleason分级组升级情况。

Machine learning prediction of Gleason grade group upgrade between in-bore biopsy and radical prostatectomy pathology.

作者信息

Ozbozduman Kaan, Loc Irem, Durmaz Selahattin, Atasoy Duygu, Kilic Mert, Yildirim Hakan, Esen Tarik, Vural Metin, Unlu M Burcin

机构信息

Bogazici University Physics Department, Istanbul, Turkey.

Department of Radiology, Istanbul Faculty of Medicine, Istanbul University, Istanbul, Turkey.

出版信息

Sci Rep. 2024 Mar 11;14(1):5849. doi: 10.1038/s41598-024-56415-5.

Abstract

This study aimed to enhance the accuracy of Gleason grade group (GG) upgrade prediction in prostate cancer (PCa) patients who underwent MRI-guided in-bore biopsy (MRGB) and radical prostatectomy (RP) through a combined analysis of prebiopsy and MRGB clinical data. A retrospective analysis of 95 patients with prostate cancer diagnosed by MRGB was conducted where all patients had undergone RP. Among the patients, 64.2% had consistent GG results between in-bore biopsies and RP, whereas 28.4% had upgraded and 7.4% had downgraded results. GG1 biopsy results, lower biopsy core count, and fewer positive cores were correlated with upgrades in the entire patient group. In patients with , larger tumor sizes and fewer biopsy cores were associated with upgrades. By integrating MRGB data with prebiopsy clinical data, machine learning (ML) models achieved 85.6% accuracy in predicting upgrades, surpassing the 64.2% baseline from MRGB alone. ML analysis also highlighted the value of the minimum apparent diffusion coefficient ( ) for patients. Incorporation of MRGB results with tumor size, value, number of biopsy cores, positive core count, and Gleason grade can be useful to predict GG upgrade at final pathology and guide patient selection for active surveillance.

摘要

本研究旨在通过对活检前和磁共振成像引导下经孔活检(MRGB)临床数据的综合分析,提高接受MRGB和根治性前列腺切除术(RP)的前列腺癌(PCa)患者Gleason分级组(GG)升级预测的准确性。对95例经MRGB诊断为前列腺癌且均接受了RP的患者进行了回顾性分析。在这些患者中,64.2%的患者经孔活检和RP的GG结果一致,而28.4%的患者结果升级,7.4%的患者结果降级。GG1活检结果、较低的活检核心数量和较少的阳性核心与整个患者组的升级相关。在[具体条件未给出]的患者中,较大的肿瘤大小和较少的活检核心与升级相关。通过将MRGB数据与活检前临床数据相结合,机器学习(ML)模型在预测升级方面的准确率达到了85.6%,超过了仅依靠MRGB的64.2%的基线水平。ML分析还突出了最小表观扩散系数([具体符号未给出])对[具体条件未给出]患者的价值。将MRGB结果与肿瘤大小、[具体符号未给出]值、活检核心数量、阳性核心数量和Gleason分级相结合,有助于预测最终病理检查时的GG升级,并指导患者选择进行主动监测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/76d1/10925603/901f7a6134d6/41598_2024_56415_Fig1_HTML.jpg

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