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人工智能指导下的基于临床组学的乳腺癌远处转移预测。

Clinicomics-guided distant metastasis prediction in breast cancer via artificial intelligence.

机构信息

Tianjin Medical University Cancer Institute and Hospital, National Clinical Research Center for Cancer, Key Laboratory of Cancer Prevention and Therapy, Tianjin's Clinical Research Center for Cancer, Tianjin, China.

The Sino-Russian Joint Research Center for Bone Metastasis in Malignant Tumor, Tianjin, China.

出版信息

BMC Cancer. 2023 Mar 14;23(1):239. doi: 10.1186/s12885-023-10704-w.

Abstract

BACKGROUND

Breast cancer has become the most common malignant tumour worldwide. Distant metastasis is one of the leading causes of breast cancer-related death. To verify the performance of clinicomics-guided distant metastasis risk prediction for breast cancer via artificial intelligence and to investigate the accuracy of the created prediction models for metachronous distant metastasis, bone metastasis and visceral metastasis.

METHODS

We retrospectively enrolled 6703 breast cancer patients from 2011 to 2016 in our hospital. The figures of magnetic resonance imaging scanning and ultrasound were collected, and the figures features of distant metastasis in breast cancer were detected. Clinicomics-guided nomogram was proven to be with significant better ability on distant metastasis prediction than the nomogram constructed by only clinical or radiographic data.

RESULTS

Three clinicomics-guided prediction nomograms on distant metastasis, bone metastasis and visceral metastasis were created and validated. These models can potentially guide metachronous distant metastasis screening and lead to the implementation of individualized prophylactic therapy for breast cancer patients.

CONCLUSION

Our study is the first study to make cliniomics a reality. Such cliniomics strategy possesses the development potential in artificial intelligence medicine.

摘要

背景

乳腺癌已成为全球最常见的恶性肿瘤。远处转移是乳腺癌相关死亡的主要原因之一。通过人工智能验证基于临床组学的乳腺癌远处转移风险预测的性能,并研究创建的预测模型对异时性远处转移、骨转移和内脏转移的准确性。

方法

我们回顾性地纳入了 2011 年至 2016 年我院的 6703 例乳腺癌患者。收集了磁共振成像扫描和超声图像,并检测了乳腺癌远处转移的图像特征。临床组学指导的列线图在远处转移预测方面明显优于仅基于临床或影像学数据构建的列线图。

结果

建立并验证了三个基于临床组学的远处转移、骨转移和内脏转移预测列线图。这些模型可能有助于指导异时性远处转移的筛查,并为乳腺癌患者实施个体化的预防性治疗。

结论

本研究首次将临床组学付诸实践。这种临床组学策略在人工智能医学中有发展潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a677/10012565/a0c4ac22845f/12885_2023_10704_Fig1_HTML.jpg

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