Clinical application of machine learning models in patients with prostate cancer before prostatectomy

被引:1
|
作者
Guerra, Adalgisa [1 ]
Orton, Matthew R. [2 ]
Wang, Helen [3 ]
Konidari, Marianna [2 ]
Maes, Kris [4 ]
Papanikolaou, Nickolas K. [2 ]
Koh, Dow Mu [2 ]
机构
[1] Hosp Luz Lisbon, Dept Radiol, Rua Fernando Curado Ribeiro 2,7 esq, P-1495094 Lisbon, Portugal
[2] Royal Marsden Hosp NHS Fdn Trust, London, England
[3] Royal Marsden Hosp NHS Fdn Trust, Royal Surrey Cty Hosp NSH Fdn Trust, London, England
[4] Hosp Luz Lisbon, Dept Urol, Lisbon, Portugal
关键词
Prostate cancer; Extracapsular extension; MRI; Radiomics; Machine learning; MULTI-PARAMETRIC MRI; PREDICTION; VALIDATION; SYSTEM;
D O I
10.1186/s40644-024-00666-y
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
BackgroundTo build machine learning predictive models for surgical risk assessment of extracapsular extension (ECE) in patients with prostate cancer (PCa) before radical prostatectomy; and to compare the use of decision curve analysis (DCA) and receiver operating characteristic (ROC) metrics for selecting input feature combinations in models.MethodsThis retrospective observational study included two independent data sets: 139 participants from a single institution (training), and 55 from 15 other institutions (external validation), both treated with Robotic Assisted Radical Prostatectomy (RARP). Five ML models, based on different combinations of clinical, semantic (interpreted by a radiologist) and radiomics features computed from T2W-MRI images, were built to predict extracapsular extension in the prostatectomy specimen (pECE+). DCA plots were used to rank the models' net benefit when assigning patients to prostatectomy with non-nerve-sparing surgery (NNSS) or nerve-sparing surgery (NSS), depending on the predicted ECE status. DCA model rankings were compared with those drived from ROC area under the curve (AUC).ResultsIn the training data, the model using clinical, semantic, and radiomics features gave the highest net benefit values across relevant threshold probabilities, and similar decision curve was observed in the external validation data. The model ranking using the AUC was different in the discovery group and favoured the model using clinical + semantic features only.ConclusionsThe combined model based on clinical, semantic and radiomic features may be used to predict pECE + in patients with PCa and results in a positive net benefit when used to choose between prostatectomy with NNS or NNSS.
引用
收藏
页数:9
相关论文
共 50 条
  • [1] Clinical application of machine learning models in patients with prostate cancer before prostatectomy
    Adalgisa Guerra
    Matthew R. Orton
    Helen Wang
    Marianna Konidari
    Kris Maes
    Nickolas K. Papanikolaou
    Dow Mu Koh
    [J]. Cancer Imaging, 24
  • [2] The practical clinical role of machine learning models with different algorithms in predicting prostate cancer local recurrence after radical prostatectomy
    Chenhan Hu
    Xiaomeng Qiao
    Chunhong Hu
    Changhao Cao
    Ximing Wang
    Jie Bao
    [J]. Cancer Imaging, 24
  • [3] The practical clinical role of machine learning models with different algorithms in predicting prostate cancer local recurrence after radical prostatectomy
    Hu, Chenhan
    Qiao, Xiaomeng
    Hu, Chunhong
    Cao, Changhao
    Wang, Ximing
    Bao, Jie
    [J]. CANCER IMAGING, 2024, 24 (01)
  • [4] Clinical trial of soy isoflavone supplementation before radical prostatectomy in patients with localized prostate cancer.
    Kucuk, O
    Sarkar, F
    Sakr, W
    Wood, D
    Cher, M
    Abrams, J
    Doerge, DD
    Pollak, MM
    Djuric, Z
    Majumdar, A
    [J]. JOURNAL OF NUTRITION, 2004, 134 (05): : 1258S - 1258S
  • [5] Application of Machine Learning Techniques to Predict Bone Metastasis in Patients with Prostate Cancer
    Liu, Wen-Cai
    Li, Ming-Xuan
    Qian, Wen-Xing
    Luo, Zhi-Wen
    Liao, Wei-Jie
    Liu, Zhi-Li
    Liu, Jia-Ming
    [J]. CANCER MANAGEMENT AND RESEARCH, 2021, 13 : 8723 - 8736
  • [6] Do Machine Learning-Based Models Perform Better Than Clinical Models in Predicting Biochemical Outcome for Prostate Cancer Patients?
    Sun, L.
    Quon, H.
    Smith, W.
    Kirkby, C.
    [J]. MEDICAL PHYSICS, 2022, 49 (06) : E234 - E234
  • [7] Clinical results of radical prostatectomy for patients with prostate cancer in Macau
    Ho Son-fat Lao Hio-fai Li Kin Tse Men-kin Department of Urology
    Centro Hospitalar Conde de Sáo Januário
    Macau Special Administrative Region
    China
    [J]. 中华医学杂志(英文版), 2008, (04) : 295 - 298
  • [8] Clinical results of radical prostatectomy for patients with prostate cancer in Macau
    Son-Fat, Ho
    Hio-Fai, Lao
    Kin, Li
    Men-Kin, Tse
    [J]. CHINESE MEDICAL JOURNAL, 2008, 121 (04) : 295 - 298
  • [9] MACHINE LEARNING MODELS TO PERFORM ACTIVE SURVEILLANCE ON PROSTATE CANCER
    Van Booven, Derek
    Sandoval, Victor
    Ismael, Farhan
    Norman, Ahmed
    Kryvenko, Oleksandr
    Punnen, Sanoj
    Arora, Himanshu
    [J]. JOURNAL OF UROLOGY, 2022, 207 (05): : E898 - E899
  • [10] Application of Machine Learning Models to the Detection of Breast Cancer
    Binsaif, Nasser
    [J]. MOBILE INFORMATION SYSTEMS, 2022, 2022