Myelofibrosis predicts deep molecular response 4.5 in chronic myeloid leukaemia patients initially treated with imatinib: An extensive, multicenter and retrospective study to develop a prognostic model

IF 7.9 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Tian Zeng, Xiudi Yang, Yi Wang, Dijiong Wu, Weiying Feng, Ying Lu, Xiaoqiong Zhu, Lirong Liu, Mei Zhou, Li Zhang, Yanping Shao, Honglan Qian, Feng Zhu, Yu Chen, Dan Cao, Li Huang, Xiaoning Feng, Lili Chen, Gang Zhang, Jing Le, Weiguo Zhu, Yongming Xia, Yanxia Han, Yongqing Jia, Guoyan Tian, Hui Zhou, Linjuan Xu, Xiufeng Yin, Qinli Tang, Yuefeng Zhang, Guoli Yao, Xianghua Lang, Kaifeng Zhang, Xiujie Zhou, Junbin Guo, Jinming Tu, Jianzhi Zhao, Gongqiang Wu, Huiqi Zhang, Xiao Wu, Qiulian Luo, Lihong Cao, Binbin Chu, Wei Jiang, Haiying Wu, Liansheng Huang, Meiwei Hu, Muqing He, Jingjing Zhu, Hongyan Tong, Jie Jin, Jian Huang
{"title":"Myelofibrosis predicts deep molecular response 4.5 in chronic myeloid leukaemia patients initially treated with imatinib: An extensive, multicenter and retrospective study to develop a prognostic model","authors":"Tian Zeng,&nbsp;Xiudi Yang,&nbsp;Yi Wang,&nbsp;Dijiong Wu,&nbsp;Weiying Feng,&nbsp;Ying Lu,&nbsp;Xiaoqiong Zhu,&nbsp;Lirong Liu,&nbsp;Mei Zhou,&nbsp;Li Zhang,&nbsp;Yanping Shao,&nbsp;Honglan Qian,&nbsp;Feng Zhu,&nbsp;Yu Chen,&nbsp;Dan Cao,&nbsp;Li Huang,&nbsp;Xiaoning Feng,&nbsp;Lili Chen,&nbsp;Gang Zhang,&nbsp;Jing Le,&nbsp;Weiguo Zhu,&nbsp;Yongming Xia,&nbsp;Yanxia Han,&nbsp;Yongqing Jia,&nbsp;Guoyan Tian,&nbsp;Hui Zhou,&nbsp;Linjuan Xu,&nbsp;Xiufeng Yin,&nbsp;Qinli Tang,&nbsp;Yuefeng Zhang,&nbsp;Guoli Yao,&nbsp;Xianghua Lang,&nbsp;Kaifeng Zhang,&nbsp;Xiujie Zhou,&nbsp;Junbin Guo,&nbsp;Jinming Tu,&nbsp;Jianzhi Zhao,&nbsp;Gongqiang Wu,&nbsp;Huiqi Zhang,&nbsp;Xiao Wu,&nbsp;Qiulian Luo,&nbsp;Lihong Cao,&nbsp;Binbin Chu,&nbsp;Wei Jiang,&nbsp;Haiying Wu,&nbsp;Liansheng Huang,&nbsp;Meiwei Hu,&nbsp;Muqing He,&nbsp;Jingjing Zhu,&nbsp;Hongyan Tong,&nbsp;Jie Jin,&nbsp;Jian Huang","doi":"10.1002/ctm2.70101","DOIUrl":null,"url":null,"abstract":"<p>Dear Editor,</p><p>Attaining a deep molecular response (DMR) has emerged as a desirable therapeutic target in chronic myeloid leukaemia (CML) patients considered for treatment-free remission (TFR).<span><sup>1</sup></span> Switching to second-line therapy after failing to reach DMR with frontline imatinib has been recognized as an effective approach.<span><sup>2</sup></span> The optimal timing for switching to more potent tyrosine kinase inhibitors (TKIs) to achieve timely DMR remains controversial.<span><sup>3</sup></span> Myelofibrosis (MF) is associated with poor overall survival and a greater risk of disease progression in CML patients.<span><sup>4-6</sup></span> However, the associations between MF and DMR in CML patients initially treated with imatinib have not been extensively studied, and we aimed to fill this gap.</p><p>Our study involved 925 CML patients with bone marrow biopsies who initially received imatinib from 1 January 2010 to 1 August 2022 (Figure S1). MF was evaluated by experienced pathologists through bone marrow biopsies and graded from 0 to 3 based on the WHO grading system (Table S1).<span><sup>7</sup></span> In this study, patients with MF-1 or higher were classified as having MF as a crucial complication of CML. The demographic and clinical characteristics of the enrolled patients, categorized by MR4.5 status, are depicted in Figure 1A. Different MF grades were significantly associated with both overall survival (log-rank <i>p</i> = .015) and MR4.5-free survival (log-rank <i>p</i> &lt; .001) (Figure S2). Patients who achieved MR4.5 had a significantly higher proportion of non-MF cases (81.26% vs. 63.99%, <i>p</i> &lt; .001) (Figure 1B). A correlation heatmap of different variables revealed that the white blood cell (WBC) count had a moderate, significant negative correlation with haemoglobin (HGB) levels (<i>r</i> = -0.58) (Figure 1C).</p><p>The 925 subjects were allocated to a training set and a validation set following a 7:3 ratio using a random splitting method via the ‘Sample’ function in R to ensure unbiased and random patient selection. No significant differences were found between the two datasets (Table S1). The Kaplan-Meier (K-M) curves revealed that patients with MF at diagnosis had a greater probability of remaining MR4.5-free compared with those without MF (<i>p</i> &lt; .001) (Figure 2A, a). Further analysis with a landmark at 18 months revealed that the inverse association was significant only after 18 months (<i>p</i> &lt; .001) (Figure 2A, b). Considering that the intersection of two curves in the K-M analysis might decrease the statistical efficiency, we concurrently plotted the restricted mean survival time (RMST) at 5 years (Figure 2B). The 5-year RMST was 39.05 months in MF patients and 33.44 months in non-MF patients.</p><p>In the training cohort, univariate Cox regression revealed that WBC, HGB, platelet (PLT), MF and 3-month early molecular response (EMR) were risk factors for the incidence of MR4.5. After adjustments, these variables were found to be independent risk factors (Figure 2C). Specifically, an EMR was linked to a hazard ratio (HR) of 4.600 (95% confidence interval [CI]: 3.191–6.631), with a <i>p-</i>value of &lt; .001. In contrast, MF was linked to a 28.5% lower likelihood of achieving MR4.5 compared with non-MF (HR: 0.715, 95% CI: 0.543–0.941, <i>p</i> = .017). Furthermore, restricted cubic spline (RCS) models indicated a significant dose-response relationship of both WBC and HGB with MR4.5 (<i>p</i> for overall &lt; .001) (Figure 2D, a,b). Intriguingly, after adjusting for confounding factors, an S-shaped association between HGB and MR4.5 (<i>p</i> for overall = .017, <i>p</i> for nonlinear = .016) was observed (Figure 2D, f). Additionally, PLT presented a positive linear correlation (<i>p</i> for overall = .031, <i>p</i> for nonlinear = .999) with MR4.5 (Figure 2D, f).</p><p>Subgroup analyses were further performed to determine whether MF's predictive value for MR4.5 remained consistent across different demographic and clinical characteristics (Figure 2D). Analyses based on sex, splenomegaly and PLT revealed that MF was significantly negatively correlated with MR4.5 across all subgroups. After adjusting for WBC, HGB, PLT and 3-month EMR, the subgroup analysis based on age revealed that an inverse association between MF and MR4.5 was statistically significant only among individuals aged ≤ 60 years (HR: 0.55, 95% CI: 0.40–0.75).</p><p>The independent predictors from the training cohort, including MF, WBC, HGB, PLT and 3-month EMR, were used to construct a nomogram for predicting MR4.5-free survival at 5 years, and an example of applying this nomogram to a given patient is provided in Figure 3A. Additionally, we stratified patients into two risk categories based on the total points derived from this nomogram. The cutoff value of 156 points for risk stratification was selected via the ‘Surv_cutpoint’ function of the ‘Survminer’ package in R, with those scoring &lt; 156 categorized as high risk and those scoring ≥ 156 as low risk. The K-M survival curve indicated a substantial difference in outcomes between the two risk groups (<i>p</i> &lt; .001) (Figure 3A). Physicians should consider switching patients categorized as high risk to more potent 2nd TKIs rather than continuing imatinib therapy after 3 months of monitoring.</p><p>Our nomogram model exhibited a robust level of discriminative ability. In the training set, the area under the curve value was 0.72. Moreover, in the validation set, the value was 0.74. Furthermore, calibration curves demonstrated that MR4.5-free survival estimates were aligned with the diagonal line. Additionally, the results of decision curve analyses demonstrated that the net benefits of applying our model surpassed those of overall interventions and no intervention approaches across most risk thresholds (Figure 3B,C). The validation of the nomogram for predicting MR4.5 at 1 year and 3 years is presented in the supplementary materials (Figures S3 and S4). The associations between the assessed variables, particularly EMR, and DMR have been reported in previous studies.<span><sup>8</sup></span> However, this study uniquely integrates these variables along with MF into an intuitive nomogram model, offering a visual and accessible way to predict the achievement of DMR. To ensure the model's transportability and generalizability, further external validation in different populations is warranted.<span><sup>9</sup></span></p><p>In conclusion, this study, concentrating on the endpoint of DMR, conducted the largest multicenter retrospective analysis of MF in CML to date. Additionally, to guide the treatment switch from imatinib to second-line therapies, a visual, accessible and well-validated model was developed to identify patients less likely to achieve DMR.</p><p>Tian Zeng designed the framework of the letter and drafted the manuscript. Xiudi Yang, Yi Wang, Dijiong Wu, Weiying Feng, Ying Lu, Xiaoqiong Zhu, Lirong Liu, Mei Zhou, Li Zhang, Yanping Shao and Honglan Qian collected the data. Feng Zhu, Yu Chen, Dan Cao, Li Huang, Xiaoning Feng, Lili Chen, Gang Zhang, Jing Le, Weiguo Zhu and Yongming Xia performed patient follow-ups. Yanxia Han, Yongqing Jia, Guoyan Tian, Hui Zhou, Linjuan Xu, Xiufeng Yin, Qinli Tang, Yuefeng Zhang, Guoli Yao, Xianghua Lang, Kaifeng Zhang and Xiujie Zhou performed data analysis. Junbin Guo, Jinming Tu, Jianzhi Zhao, Gongqiang Wu, Huiqi Zhang, Xiao Wu, Qiulian Luo, Lihong Cao, Binbin Chu and Wei Jiang generated figures and tables. Haiying Wu, Liansheng Huang, Meiwei Hu, Muqing He and Jingjing Zhu provided final modifications to the manuscript. Hongyan Tong, Jie Jin and Jian Huang conceived and supervised the study. All authors contributed to manuscript revisions and approved the final manuscript as submitted.</p><p>The authors declare no conflict of interest.</p><p>This research was funded by the Key R&amp;D Program of Zhejiang (No. 2022C03137) and the Zhejiang Medical Association Clinical Medical Research Special Fund Project (No. 2022ZYC-D09).</p><p>This study was approved by the Ethics Committee of the First Affiliated Hospital, School of Medicine, Zhejiang University Institutional Review Board and was conducted in compliance with the Declaration of Helsinki. Written informed consent was waived due to the retrospective nature of the study and the use of anonymized data.</p>","PeriodicalId":10189,"journal":{"name":"Clinical and Translational Medicine","volume":"14 11","pages":""},"PeriodicalIF":7.9000,"publicationDate":"2024-11-22","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://onlinelibrary.wiley.com/doi/epdf/10.1002/ctm2.70101","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Clinical and Translational Medicine","FirstCategoryId":"3","ListUrlMain":"https://onlinelibrary.wiley.com/doi/10.1002/ctm2.70101","RegionNum":1,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"MEDICINE, RESEARCH & EXPERIMENTAL","Score":null,"Total":0}
引用次数: 0

Abstract

Dear Editor,

Attaining a deep molecular response (DMR) has emerged as a desirable therapeutic target in chronic myeloid leukaemia (CML) patients considered for treatment-free remission (TFR).1 Switching to second-line therapy after failing to reach DMR with frontline imatinib has been recognized as an effective approach.2 The optimal timing for switching to more potent tyrosine kinase inhibitors (TKIs) to achieve timely DMR remains controversial.3 Myelofibrosis (MF) is associated with poor overall survival and a greater risk of disease progression in CML patients.4-6 However, the associations between MF and DMR in CML patients initially treated with imatinib have not been extensively studied, and we aimed to fill this gap.

Our study involved 925 CML patients with bone marrow biopsies who initially received imatinib from 1 January 2010 to 1 August 2022 (Figure S1). MF was evaluated by experienced pathologists through bone marrow biopsies and graded from 0 to 3 based on the WHO grading system (Table S1).7 In this study, patients with MF-1 or higher were classified as having MF as a crucial complication of CML. The demographic and clinical characteristics of the enrolled patients, categorized by MR4.5 status, are depicted in Figure 1A. Different MF grades were significantly associated with both overall survival (log-rank p = .015) and MR4.5-free survival (log-rank p < .001) (Figure S2). Patients who achieved MR4.5 had a significantly higher proportion of non-MF cases (81.26% vs. 63.99%, p < .001) (Figure 1B). A correlation heatmap of different variables revealed that the white blood cell (WBC) count had a moderate, significant negative correlation with haemoglobin (HGB) levels (r = -0.58) (Figure 1C).

The 925 subjects were allocated to a training set and a validation set following a 7:3 ratio using a random splitting method via the ‘Sample’ function in R to ensure unbiased and random patient selection. No significant differences were found between the two datasets (Table S1). The Kaplan-Meier (K-M) curves revealed that patients with MF at diagnosis had a greater probability of remaining MR4.5-free compared with those without MF (p < .001) (Figure 2A, a). Further analysis with a landmark at 18 months revealed that the inverse association was significant only after 18 months (p < .001) (Figure 2A, b). Considering that the intersection of two curves in the K-M analysis might decrease the statistical efficiency, we concurrently plotted the restricted mean survival time (RMST) at 5 years (Figure 2B). The 5-year RMST was 39.05 months in MF patients and 33.44 months in non-MF patients.

In the training cohort, univariate Cox regression revealed that WBC, HGB, platelet (PLT), MF and 3-month early molecular response (EMR) were risk factors for the incidence of MR4.5. After adjustments, these variables were found to be independent risk factors (Figure 2C). Specifically, an EMR was linked to a hazard ratio (HR) of 4.600 (95% confidence interval [CI]: 3.191–6.631), with a p-value of < .001. In contrast, MF was linked to a 28.5% lower likelihood of achieving MR4.5 compared with non-MF (HR: 0.715, 95% CI: 0.543–0.941, p = .017). Furthermore, restricted cubic spline (RCS) models indicated a significant dose-response relationship of both WBC and HGB with MR4.5 (p for overall < .001) (Figure 2D, a,b). Intriguingly, after adjusting for confounding factors, an S-shaped association between HGB and MR4.5 (p for overall = .017, p for nonlinear = .016) was observed (Figure 2D, f). Additionally, PLT presented a positive linear correlation (p for overall = .031, p for nonlinear = .999) with MR4.5 (Figure 2D, f).

Subgroup analyses were further performed to determine whether MF's predictive value for MR4.5 remained consistent across different demographic and clinical characteristics (Figure 2D). Analyses based on sex, splenomegaly and PLT revealed that MF was significantly negatively correlated with MR4.5 across all subgroups. After adjusting for WBC, HGB, PLT and 3-month EMR, the subgroup analysis based on age revealed that an inverse association between MF and MR4.5 was statistically significant only among individuals aged ≤ 60 years (HR: 0.55, 95% CI: 0.40–0.75).

The independent predictors from the training cohort, including MF, WBC, HGB, PLT and 3-month EMR, were used to construct a nomogram for predicting MR4.5-free survival at 5 years, and an example of applying this nomogram to a given patient is provided in Figure 3A. Additionally, we stratified patients into two risk categories based on the total points derived from this nomogram. The cutoff value of 156 points for risk stratification was selected via the ‘Surv_cutpoint’ function of the ‘Survminer’ package in R, with those scoring < 156 categorized as high risk and those scoring ≥ 156 as low risk. The K-M survival curve indicated a substantial difference in outcomes between the two risk groups (p < .001) (Figure 3A). Physicians should consider switching patients categorized as high risk to more potent 2nd TKIs rather than continuing imatinib therapy after 3 months of monitoring.

Our nomogram model exhibited a robust level of discriminative ability. In the training set, the area under the curve value was 0.72. Moreover, in the validation set, the value was 0.74. Furthermore, calibration curves demonstrated that MR4.5-free survival estimates were aligned with the diagonal line. Additionally, the results of decision curve analyses demonstrated that the net benefits of applying our model surpassed those of overall interventions and no intervention approaches across most risk thresholds (Figure 3B,C). The validation of the nomogram for predicting MR4.5 at 1 year and 3 years is presented in the supplementary materials (Figures S3 and S4). The associations between the assessed variables, particularly EMR, and DMR have been reported in previous studies.8 However, this study uniquely integrates these variables along with MF into an intuitive nomogram model, offering a visual and accessible way to predict the achievement of DMR. To ensure the model's transportability and generalizability, further external validation in different populations is warranted.9

In conclusion, this study, concentrating on the endpoint of DMR, conducted the largest multicenter retrospective analysis of MF in CML to date. Additionally, to guide the treatment switch from imatinib to second-line therapies, a visual, accessible and well-validated model was developed to identify patients less likely to achieve DMR.

Tian Zeng designed the framework of the letter and drafted the manuscript. Xiudi Yang, Yi Wang, Dijiong Wu, Weiying Feng, Ying Lu, Xiaoqiong Zhu, Lirong Liu, Mei Zhou, Li Zhang, Yanping Shao and Honglan Qian collected the data. Feng Zhu, Yu Chen, Dan Cao, Li Huang, Xiaoning Feng, Lili Chen, Gang Zhang, Jing Le, Weiguo Zhu and Yongming Xia performed patient follow-ups. Yanxia Han, Yongqing Jia, Guoyan Tian, Hui Zhou, Linjuan Xu, Xiufeng Yin, Qinli Tang, Yuefeng Zhang, Guoli Yao, Xianghua Lang, Kaifeng Zhang and Xiujie Zhou performed data analysis. Junbin Guo, Jinming Tu, Jianzhi Zhao, Gongqiang Wu, Huiqi Zhang, Xiao Wu, Qiulian Luo, Lihong Cao, Binbin Chu and Wei Jiang generated figures and tables. Haiying Wu, Liansheng Huang, Meiwei Hu, Muqing He and Jingjing Zhu provided final modifications to the manuscript. Hongyan Tong, Jie Jin and Jian Huang conceived and supervised the study. All authors contributed to manuscript revisions and approved the final manuscript as submitted.

The authors declare no conflict of interest.

This research was funded by the Key R&D Program of Zhejiang (No. 2022C03137) and the Zhejiang Medical Association Clinical Medical Research Special Fund Project (No. 2022ZYC-D09).

This study was approved by the Ethics Committee of the First Affiliated Hospital, School of Medicine, Zhejiang University Institutional Review Board and was conducted in compliance with the Declaration of Helsinki. Written informed consent was waived due to the retrospective nature of the study and the use of anonymized data.

骨髓纤维化可预测最初接受伊马替尼治疗的慢性髓性白血病患者的深度分子反应4.5:开发预后模型的广泛、多中心和回顾性研究
亲爱的编辑,对于考虑获得无治疗缓解(TFR)的慢性粒细胞白血病(CML)患者而言,获得深度分子反应(DMR)已成为一个理想的治疗目标1 。骨髓纤维化(MF)与CML患者总生存率低和疾病进展风险大有关4-6。然而,最初接受伊马替尼治疗的CML患者中,MF与DMR之间的关系尚未得到广泛研究,我们的研究旨在填补这一空白。我们的研究涉及925名在2010年1月1日至2022年8月1日期间最初接受伊马替尼治疗并进行了骨髓活检的CML患者(图S1)。骨髓纤维化由经验丰富的病理学家通过骨髓活检进行评估,并根据世界卫生组织的分级系统(表 S1)将骨髓纤维化分为 0 至 3 级7 。在本研究中,骨髓纤维化为 1 级或以上的患者被归类为骨髓纤维化是 CML 的重要并发症。按 MR4.5 状态分类的入组患者的人口统计学和临床特征见图 1A。不同的 MF 分级与总生存期(log-rank p = .015)和无 MR4.5 生存期(log-rank p &lt;.001)显著相关(图 S2)。达到MR4.5的患者中,非MF病例的比例明显更高(81.26% vs. 63.99%,p &lt; .001)(图1B)。不同变量的相关热图显示,白细胞(WBC)计数与血红蛋白(HGB)水平呈中度、显著的负相关(r = -0.58)(图 1C)。为了确保无偏见、随机地选择患者,我们使用 R 中的 "样本 "函数,按照 7:3 的比例将 925 名受试者分配到训练集和验证集。两个数据集之间没有发现明显差异(表 S1)。卡普兰-梅耶(K-M)曲线显示,诊断时患有骨髓纤维瘤的患者与无骨髓纤维瘤的患者相比,保持无 MR4.5 的概率更高(p &lt;.001)(图 2A,a)。以 18 个月为标志的进一步分析表明,只有在 18 个月后,反向关联才显著(p &lt;.001)(图 2A,b)。考虑到 K-M 分析中两条曲线的交叉可能会降低统计效率,我们同时绘制了 5 年的受限平均生存时间(RMST)(图 2B)。在训练队列中,单变量 Cox 回归显示,白细胞、血红蛋白、血小板(PLT)、MF 和 3 个月早期分子反应(EMR)是 MR4.5 发生率的危险因素。经调整后,发现这些变量是独立的风险因素(图 2C)。具体来说,EMR与4.600(95% 置信区间 [CI]:3.191-6.631)的危险比(HR)相关,P值为&lt; .001。相反,与非 MF 相比,MF 达到 MR4.5 的可能性降低了 28.5%(HR:0.715,95% 置信区间 [CI]:0.543-0.941,p = .017)。此外,限制性立方样条曲线(RCS)模型显示,白细胞和血红蛋白与 MR4.5 之间存在显著的剂量-反应关系(总体 p 为 0.001)(图 2D,a,b)。耐人寻味的是,在调整混杂因素后,观察到 HGB 与 MR4.5 呈 S 型关系(总体 p = .017,非线性 p = .016)(图 2D,f)。此外,PLT 与 MR4.5 呈正线性相关(总体 p = .031,非线性 p = .999)(图 2D,f)。进一步进行了亚组分析,以确定 MF 对 MR4.5 的预测价值是否在不同的人口统计学和临床特征中保持一致(图 2D)。基于性别、脾大和 PLT 的分析表明,在所有亚组中,MF 与 MR4.5 呈显著负相关。在对白细胞、血红蛋白、凝乳酶原和 3 个月 EMR 进行调整后,基于年龄的亚组分析显示,MF 与 MR4.5 之间的负相关仅在年龄≤ 60 岁的个体中具有统计学意义(HR:0.55,95% CI:0.40-0.75)。我们利用训练队列中的独立预测因子(包括 MF、WBC、HGB、PLT 和 3 个月的 EMR)构建了预测 5 年无 MR4.5 生存率的提名图,图 3A 提供了将该提名图应用于给定患者的示例。此外,我们还根据该提名图得出的总积分将患者分为两个风险类别。通过 R 软件包 "Survminer "中的 "Surv_cutpoint "函数,我们选择了 156 分作为风险分层的临界值,其中得分 &lt; 156 的患者为高风险,得分≥ 156 的患者为低风险。K-M 生存曲线显示,两个风险组之间的结果差异很大(p &lt;.001)(图 3A)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
求助全文
约1分钟内获得全文 求助全文
来源期刊
CiteScore
15.90
自引率
1.90%
发文量
450
审稿时长
4 weeks
期刊介绍: Clinical and Translational Medicine (CTM) is an international, peer-reviewed, open-access journal dedicated to accelerating the translation of preclinical research into clinical applications and fostering communication between basic and clinical scientists. It highlights the clinical potential and application of various fields including biotechnologies, biomaterials, bioengineering, biomarkers, molecular medicine, omics science, bioinformatics, immunology, molecular imaging, drug discovery, regulation, and health policy. With a focus on the bench-to-bedside approach, CTM prioritizes studies and clinical observations that generate hypotheses relevant to patients and diseases, guiding investigations in cellular and molecular medicine. The journal encourages submissions from clinicians, researchers, policymakers, and industry professionals.
×
引用
GB/T 7714-2015
复制
MLA
复制
APA
复制
导出至
BibTeX EndNote RefMan NoteFirst NoteExpress
×
提示
您的信息不完整,为了账户安全,请先补充。
现在去补充
×
提示
您因"违规操作"
具体请查看互助需知
我知道了
×
提示
确定
请完成安全验证×
copy
已复制链接
快去分享给好友吧!
我知道了
右上角分享
点击右上角分享
0
联系我们:info@booksci.cn Book学术提供免费学术资源搜索服务,方便国内外学者检索中英文文献。致力于提供最便捷和优质的服务体验。 Copyright © 2023 布克学术 All rights reserved.
京ICP备2023020795号-1
ghs 京公网安备 11010802042870号
Book学术文献互助
Book学术文献互助群
群 号:481959085
Book学术官方微信