Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Purpose: Model-based tumor growth inhibition (TGI) metrics are increasingly incorporated into go/no-go decisions in early clinical studies. To apply this methodology to new investigational combinations requires independent evaluation of TGI metrics in recently completed Phase III trials of effective immunotherapy.

Patients And Methods: Data were extracted from IMpower150, a positive, randomized, Phase III study of first-line therapy in 1,202 patients with non-small cell lung cancer. We resampled baseline characteristics and longitudinal sum of longest diameters of tumor lesions of patients from both arms, atezolizumab+ bevacizumab+chemotherapy (ABCP) versus BCP, to mimic Phase Ib/II studies of 15 to 40 patients/arm with 6 to 24 weeks follow-up. TGI metrics were estimated using a bi-exponential TGI model. Effect sizes were calculated as TGI metrics geometric mean ratio (GMR), objective response rate (ORR) difference (d), and progression-free survival (PFS), hazard ratio (HR) between arms. Correct and incorrect go decisions were evaluated as the probability to achieve desired effect sizes in ABCP versus BCP and BCP versus BCP, respectively, across 500 replicated subsamples for each design.

Results: For 40 patients/24 weeks follow-up, correct go decisions based on probability tumor growth rate (KG) GMR <0.90, dORR >0.10, and PFS HR <0.70 were 83%, 69%, and 58% with incorrect go decision rates of 4%, 12%, and 11%, respectively. For other designs, the ranking did not change with TGI metrics consistently overperforming RECIST endpoints. The predicted overall survival (OS) HR was around 0.80 in most of the scenarios investigated.

Conclusions: Model-based estimate of KG GMR is an exploratory endpoint that informs early clinical decisions for combination studies.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10023325PMC
http://dx.doi.org/10.1158/1078-0432.CCR-22-2323DOI Listing

Publication Analysis

Top Keywords

tgi metrics
16
phase iii
12
versus bcp
12
phase ib/ii
8
iii study
8
tumor growth
8
abcp versus
8
weeks follow-up
8
phase
5
tgi
5

Similar Publications

Predictive models for disease progression are valuable for clinical trial design and interpretation; however, suitable data are needed for the development of such models. This study aimed to develop a Tumor Growth Inhibition-Overall Survival (TGI-OS) model for hormone receptor-positive (HR+)/human epidermal growth factor receptor 2 negative (HER2-) breast cancer using clinical trial data available through Vivli, a clinical trial data sharing platform. The CONFIRM study (Phase 3 study comparing fulvestrant 250 vs.

View Article and Find Full Text PDF

Antibody drug conjugates (ADC) are a promising class of oncology therapeutics consisting of an antibody conjugated to a payload via a linker. DYP688 is a novel ADC comprising of a signaling protein inhibitor payload (FR900359) that undergoes unique on-antibody inactivation in plasma, resulting in complex pharmacology. To assess the impact of FR inactivation on DYP688 pharmacology and clinical developability, we performed translational modeling of preclinical PK and tumor growth inhibition (TGI) data, accompanied by mechanistic Krogh cylinder tumor modeling.

View Article and Find Full Text PDF
Article Synopsis
  • ER+ HER2- breast cancer often has PIK3CA mutations, complicating treatment due to endocrine resistance, necessitating a combination therapy approach.
  • The study developed tumor growth inhibition models to analyze treatment responses in postmenopausal women receiving either fulvestrant alone or with taselisib, aiming to identify which patient subsets benefit most from these therapies.
  • Results indicated that larger tumor size and lack of endocrine sensitivity correlate with increased tumor growth, while the combination treatment showed promising anti-tumor effects, underscoring the need for personalized treatment plans and model-informed drug development.
View Article and Find Full Text PDF

Model-based tumor growth inhibition (TGI) metrics are increasingly used to predict overall survival (OS) data in Phase III immunotherapy clinical trials. However, there is still a lack of understanding regarding the differences between two-stage or joint modeling methods to leverage Phase I/II trial data and help early decision-making. A recent study showed that TGI metrics such as the tumor growth rate constant K may have good operating characteristics as early endpoints.

View Article and Find Full Text PDF

A joint modeling framework was developed using data from 75 patients of early amcenestrant phase I-II AMEERA-1-2 dose escalation and expansion cohorts. A semi-mechanistic tumor growth inhibition (TGI) model was developed. It accounts for the dynamics of sensitive and resistant tumor cells, an exposure-driven effect on tumor proliferation of sensitive cells, and a delay in the initiation of treatment effect to describe the time course of target lesion tumor size (TS) data.

View Article and Find Full Text PDF