IntroductionUveal melanoma (UM) is the most common intraocular malignancy in adults. Plaque brachytherapy remains the dominant eyeball-conserving therapy for UM. Tumor regression in UM after plaque brachytherapy has been reported as a valuable prognostic factor. The present study aimed to develop an accurate machine-learning model to predict the 4-year risk of metastasis and death in UM based on ocular ultrasound data. Material and MethodsA total of 454 patients with UM were enrolled in this retrospective, single-center study. All patients were followed up for at least 4 years after plaque brachytherapy and underwent ophthalmologic evaluations before the therapy. B-scan ultrasonography was used to measure the basal diameters and thickness of tumors preoperatively and postoperatively. Random Forest (RF) algorithm was used to construct two prediction models: whether a patient will survive for more than 4 years and whether the tumor will develop metastasis within 4 years after treatment. ResultsOur predictive model achieved an area under the receiver operating characteristic curve (AUC) of 0.708 for predicting death using only a one-time follow-up record. Including the data from two additional follow-ups increased the AUC of the model to 0.883. We attained AUCs of 0.730 and 0.846 with data from one and three-time follow-up, respectively, for predicting metastasis. The model found that the amount of postoperative follow-up data significantly improved death and metastasis prediction accuracy. Furthermore, we divided tumor treatment response into four patterns. The D(decrease)/S(stable) patterns are associated with a significantly better prognosis than the I(increase)/O(other) patterns. ConclusionsThe present study developed an RF model to predict the risk of metastasis and death from UM within 4 years based on ultrasound follow-up records following plaque brachytherapy. We intend to further validate our model in prospective datasets, enabling us to implement timely and efficient treatments.
基金:
National Natural Science
Foundation of China (82101180); Beijing Natural Science
Foundation (7204245); Scientific Research Common
Program of Beijing Municipal Commission of Education
(KM202010025018); Beijing Municipal Administration
of Hospital’s Youth Programme (QML20190202); Beijing
Dongcheng District Outstanding Talents Cultivating Plan (2018);
the Capital Health Research and Development of Special (2020-
1-2052); Science & Technology Project of Beijing Municipal
Science & Technology Commission (Z201100005520045,
Z181100001818003).
第一作者机构:[1]Capital Med Univ, Beijing Tongren Hosp,Key Lab,Minist Ind & Informa, Beijing Ophthalmol & Visual Sci Key Lab,Beijing K, Med Artificial Intelligence Res & Verificat,Beiji, Beijing, Peoples R China
共同第一作者:
通讯作者:
推荐引用方式(GB/T 7714):
Luo Jingting,Chen Yuning,Yang Yuhang,et al.Prognosis Prediction of Uveal Melanoma After Plaque Brachytherapy Based on Ultrasound With Machine Learning[J].FRONTIERS IN MEDICINE.2022,8:777142.doi:10.3389/fmed.2021.777142.
APA:
Luo, Jingting,Chen, Yuning,Yang, Yuhang,Zhang, Kai,Liu, Yueming...&Wei, Wenbin.(2022).Prognosis Prediction of Uveal Melanoma After Plaque Brachytherapy Based on Ultrasound With Machine Learning.FRONTIERS IN MEDICINE,8,
MLA:
Luo, Jingting,et al."Prognosis Prediction of Uveal Melanoma After Plaque Brachytherapy Based on Ultrasound With Machine Learning".FRONTIERS IN MEDICINE 8.(2022):777142