Literature DB >> 31392808

A machine learning-assisted decision-support model to better identify patients with prostate cancer requiring an extended pelvic lymph node dissection.

Ying Hou1, Mei-Ling Bao2, Chen-Jiang Wu1, Jing Zhang1, Yu-Dong Zhang1, Hai-Bin Shi1.   

Abstract

OBJECTIVES: To develop a machine learning (ML)-assisted model to identify candidates for extended pelvic lymph node dissection (ePLND) in prostate cancer by integrating clinical, biopsy, and precisely defined magnetic resonance imaging (MRI) findings. PATIENTS AND METHODS: In all, 248 patients treated with radical prostatectomy and ePLND or PLND were included. ML-assisted models were developed from 18 integrated features using logistic regression (LR), support vector machine (SVM), and random forests (RFs). The models were compared to the Memorial SloanKettering Cancer Center (MSKCC) nomogram using receiver operating characteristic-derived area under the curve (AUC) calibration plots and decision curve analysis (DCA).
RESULTS: A total of 59/248 (23.8%) lymph node invasions (LNIs) were identified at surgery. The predictive accuracy of the ML-based models, with (+) or without (-) MRI-reported LNI, yielded similar AUCs (RFs+ /RFs- : 0.906/0.885; SVM+ /SVM- : 0.891/0.868; LR+ /LR- : 0.886/0.882) and were higher than the MSKCC nomogram (0.816; P < 0.001). The calibration of the MSKCC nomogram tended to underestimate LNI risk across the entire range of predicted probabilities compared to the ML-assisted models. The DCA showed that the ML-assisted models significantly improved risk prediction at a risk threshold of ≤80% compared to the MSKCC nomogram. If ePLNDs missed was controlled at <3%, both RFs+ and RFs- resulted in a higher positive predictive value (51.4%/49.6% vs 40.3%), similar negative predictive value (97.2%/97.8% vs 97.2%), and higher number of ePLNDs spared (56.9%/54.4% vs 43.9%) compared to the MSKCC nomogram.
CONCLUSIONS: Our ML-based model, with a 5-15% cutoff, is superior to the MSKCC nomogram, sparing ≥50% of ePLNDs with a risk of missing <3% of LNIs.
© 2019 The Authors BJU International © 2019 BJU International Published by John Wiley & Sons Ltd.

Entities:  

Keywords:  #PCSM; #ProstateCancer; logistic regression; machine learning; pelvic lymph node invasion; random forests; support vector machine

Mesh:

Year:  2019        PMID: 31392808     DOI: 10.1111/bju.14892

Source DB:  PubMed          Journal:  BJU Int        ISSN: 1464-4096            Impact factor:   5.588


  6 in total

1.  Preoperative prediction of pelvic lymph nodes metastasis in prostate cancer using an ADC-based radiomics model: comparison with clinical nomograms and PI-RADS assessment.

Authors:  Xiang Liu; Xiangpeng Wang; Yaofeng Zhang; Zhaonan Sun; Xiaodong Zhang; Xiaoying Wang
Journal:  Abdom Radiol (NY)       Date:  2022-06-28

2.  Multivariable Models Incorporating Multiparametric Magnetic Resonance Imaging Efficiently Predict Results of Prostate Biopsy and Reduce Unnecessary Biopsy.

Authors:  Shuanbao Yu; Guodong Hong; Jin Tao; Yan Shen; Junxiao Liu; Biao Dong; Yafeng Fan; Ziyao Li; Ali Zhu; Xuepei Zhang
Journal:  Front Oncol       Date:  2020-11-11       Impact factor: 6.244

3.  Machine learning-assisted decision-support models to better predict patients with calculous pyonephrosis.

Authors:  Hailang Liu; Xinguang Wang; Kun Tang; Ejun Peng; Ding Xia; Zhiqiang Chen
Journal:  Transl Androl Urol       Date:  2021-02

4.  Development and validation of the 3D U-Net algorithm for segmentation of pelvic lymph nodes on diffusion-weighted images.

Authors:  Xiang Liu; Zhaonan Sun; Chao Han; Yingpu Cui; Jiahao Huang; Xiangpeng Wang; Xiaodong Zhang; Xiaoying Wang
Journal:  BMC Med Imaging       Date:  2021-11-13       Impact factor: 1.930

5.  Artificial Intelligence Combined With Big Data to Predict Lymph Node Involvement in Prostate Cancer: A Population-Based Study.

Authors:  Liwei Wei; Yongdi Huang; Zheng Chen; Hongyu Lei; Xiaoping Qin; Lihong Cui; Yumin Zhuo
Journal:  Front Oncol       Date:  2021-10-14       Impact factor: 6.244

6.  Evaluating Incidence, Location, and Predictors of Positive Surgical Margin Among Chinese Men Undergoing Robot-Assisted Radical Prostatectomy.

Authors:  Wugong Qu; Shuanbao Yu; Jin Tao; Biao Dong; Yafeng Fan; Haopeng Du; Haotian Deng; Junxiao Liu; Xuepei Zhang
Journal:  Cancer Control       Date:  2021 Jan-Dec       Impact factor: 3.302

  6 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.