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Watson for Oncology 与乳腺癌治疗推荐:与专家多学科肿瘤委员会的一致性。

Watson for Oncology and breast cancer treatment recommendations: agreement with an expert multidisciplinary tumor board.

机构信息

Manipal Comprehensive Cancer Centre, Manipal Hospital, Bangalore, India.

IBM Research (Retired), Yorktown Heights.

出版信息

Ann Oncol. 2018 Feb 1;29(2):418-423. doi: 10.1093/annonc/mdx781.

Abstract

BACKGROUND

Breast cancer oncologists are challenged to personalize care with rapidly changing scientific evidence, drug approvals, and treatment guidelines. Artificial intelligence (AI) clinical decision-support systems (CDSSs) have the potential to help address this challenge. We report here the results of examining the level of agreement (concordance) between treatment recommendations made by the AI CDSS Watson for Oncology (WFO) and a multidisciplinary tumor board for breast cancer.

PATIENTS AND METHODS

Treatment recommendations were provided for 638 breast cancers between 2014 and 2016 at the Manipal Comprehensive Cancer Center, Bengaluru, India. WFO provided treatment recommendations for the identical cases in 2016. A blinded second review was carried out by the center's tumor board in 2016 for all cases in which there was not agreement, to account for treatments and guidelines not available before 2016. Treatment recommendations were considered concordant if the tumor board recommendations were designated 'recommended' or 'for consideration' by WFO.

RESULTS

Treatment concordance between WFO and the multidisciplinary tumor board occurred in 93% of breast cancer cases. Subgroup analysis found that patients with stage I or IV disease were less likely to be concordant than patients with stage II or III disease. Increasing age was found to have a major impact on concordance. Concordance declined significantly (P ≤ 0.02; P < 0.001) in all age groups compared with patients <45 years of age, except for the age group 55-64 years. Receptor status was not found to affect concordance.

CONCLUSION

Treatment recommendations made by WFO and the tumor board were highly concordant for breast cancer cases examined. Breast cancer stage and patient age had significant influence on concordance, while receptor status alone did not. This study demonstrates that the AI clinical decision-support system WFO may be a helpful tool for breast cancer treatment decision making, especially at centers where expert breast cancer resources are limited.

摘要

背景

乳腺癌肿瘤学家面临着挑战,需要根据快速变化的科学证据、药物批准和治疗指南来个性化护理。人工智能(AI)临床决策支持系统(CDSS)有可能帮助解决这一挑战。我们在此报告了检查 AI 临床决策支持系统 Watson for Oncology(WFO)与多学科肿瘤委员会针对乳腺癌提出的治疗建议之间的一致性(相符程度)的结果。

患者和方法

2014 年至 2016 年,在印度班加罗尔的 Manipal 综合癌症中心对 638 例乳腺癌进行了治疗建议。WFO 在 2016 年为相同的病例提供了治疗建议。对于所有存在不一致的病例,中心的肿瘤委员会在 2016 年进行了盲法二次审查,以考虑 2016 年之前不可用的治疗方法和指南。如果肿瘤委员会的建议被 WFO 指定为“推荐”或“考虑”,则认为治疗建议是一致的。

结果

WFO 与多学科肿瘤委员会之间的治疗一致性在 93%的乳腺癌病例中出现。亚组分析发现,与 II 期或 III 期疾病患者相比,I 期或 IV 期疾病患者的一致性较低。发现年龄增长对一致性有重大影响。与<45 岁的患者相比,所有年龄组的一致性都显著下降(P≤0.02;P<0.001),但 55-64 岁年龄组除外。受体状态未发现对一致性有影响。

结论

检查的乳腺癌病例中,WFO 和肿瘤委员会提出的治疗建议高度一致。乳腺癌分期和患者年龄对一致性有显著影响,而受体状态单独没有影响。这项研究表明,AI 临床决策支持系统 WFO 可能是乳腺癌治疗决策的有用工具,特别是在专家乳腺癌资源有限的中心。

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