Case report: Individualized treatment of advanced breast cancer with the use of the patient-derived tumor-like cell cluster model

Author:

Xia Wenjie,Chen Wuzhen,Fang Shan,Wu Jun,Zhang Jingxia,Yuan Hongjun

Abstract

Breast cancer is one of the most common tumors in women. Despite various treatments, the survival of patients with advanced breast cancer is still disappointing. Furthermore, finding an effective individualized treatment for different kinds of patients is a thorny problem. Patient-derived tumor-like cell clusters were reported to be used for personalized drug testing in cancer therapy and had a prediction accuracy of 93%. However, there is still a lack of case reports about its application in the individualized treatment of breast cancer patients. Here, we described four cases of individualized treatment for advanced breast cancer using the patient-derived tumor-like cell cluster model (PTC model). In these four cases, the PTC model showed a good predictive effect. The tumor size was reduced significantly or even disappeared completely through clinical, radiological, or pathological evaluation with the help of the PTC model for selecting an individualized therapy regimen. Furthermore, the drug sensitivity test results of the PTC model were consistent with pathological molecular typing and the actual clinical drug resistance of the patients. In summary, our case report first evaluated the application value of the PTC model in advanced breast cancer, and the PTC model might be used as an efficient tool for drug resistance screening and for selecting a better personalized treatment, although further study is needed to prove the validity and stability of the PTC model in drug screening.

Funder

Zhejiang Province Public Welfare Technology Application Research Project

Natural Science Foundation of Zhejiang Province

Medical Science and Technology Project of Zhejiang Province

Publisher

Frontiers Media SA

Subject

Cancer Research,Oncology

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1. Antineoplastics;Reactions Weekly;2023-04-15

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