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Home NEWS Science News Cancer

Predicting Colorectal Cancer Using Lifestyle Factors

Bioengineer by Bioengineer
August 3, 2025
in Cancer
Reading Time: 4 mins read
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A groundbreaking study published in BMC Cancer introduces a pioneering risk-prediction model that intricately links lifestyle factors to colorectal cancer (CRC) incidence, offering fresh avenues for early detection and tailored prevention strategies. As colorectal cancer continues to be a leading cause of cancer-related morbidity and mortality worldwide, understanding how modifiable lifestyle elements influence individual risk is paramount. This research leverages expansive national health data to sharpen prediction accuracy, potentially revolutionizing patient-specific interventions.

The research team employed data from the National Health Insurance Service (NHIS)-National Sample Cohort, encompassing a substantial population subjected to health examinations between 2009 and 2012. This comprehensive dataset allowed the investigators to stratify participants into distinct age groups—young adults (20–39 years), middle-aged (40–59 years), and older adults (≥60 years)—facilitating nuanced analysis that accounts for age-specific risk dynamics in colorectal carcinogenesis.

Central to this study is the innovative use of a LASSO (Least Absolute Shrinkage and Selection Operator) regression algorithm, an advanced statistical method designed to refine predictive models by selecting the most influential risk factors while minimizing overfitting. This technique enabled the researchers to distill a broad spectrum of lifestyle and metabolic parameters down to those most predictive of colorectal cancer incidence.

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Following feature selection, the team applied a Cox proportional hazards model—a robust approach widely used in survival analysis—to forecast 10-year risk probabilities for colorectal cancer among different age cohorts. The integration of these methodologies culminated in the construction of nomogram-based risk scores, visual tools that estimate individualized risk by incorporating various lifestyle factors weighted according to their predictive strength.

Among the candidate predictors evaluated were sex, age, abdominal obesity, body mass index (BMI), smoking status, alcohol consumption levels, physical activity, presence of abnormal liver function, hypertension, hypercholesterolemia, and type 2 diabetes mellitus. The comprehensive inclusion of metabolic health indicators alongside traditional lifestyle variables underscores the multifactorial nature of colorectal cancer risk.

The study’s results revealed a clear dose-response relationship: individuals with higher calculated risk scores demonstrated significantly increased probabilities of developing colorectal cancer within the 10-year observation window. This trend held consistent across the specified age groups, affirming the model’s age-adaptive predictive capability.

Discriminatory power, assessed via concordance indices ranging from 0.60 to 0.70, indicated moderate but clinically meaningful accuracy. Such indices reflect the model’s ability to correctly rank individuals by their risk, a critical feature for practical risk stratification in clinical settings.

Calibration analyses further underscored the model’s reliability; through rigorous 10-fold cross-validation, predicted probabilities closely matched observed CRC incidence rates across the entire risk spectrum. This fidelity between prediction and outcome bolsters confidence in the nomogram’s clinical applicability.

Kaplan-Meier survival analysis illuminated stark contrasts in colorectal cancer development trajectories between high-risk and low-risk groups. Those categorized as high-risk based on nomogram scores exhibited substantially elevated cumulative incidence rates over the decade, highlighting the model’s potential utility in identifying individuals who would benefit most from intensive surveillance and preventive measures.

One of the study’s novel contributions is the demonstration of slight variations in how lifestyle factors impact colorectal cancer risk across different age categories. This suggests that tailored interventions considering age-specific risk profiles may optimize cancer prevention strategies, moving beyond one-size-fits-all guidelines.

The implications for public health and clinical practice stemming from this research are profound. By enabling personalized risk assessment rooted in modifiable lifestyle factors, the nomogram paves the way for proactive behavioral modifications and early clinical interventions that could drastically reduce CRC burden.

Moreover, incorporating metabolic health indicators such as liver function abnormalities and cardiometabolic disorders aligns with emerging evidence linking systemic health states to colorectal carcinogenesis. This integrated approach shifts predictive modeling toward holistic health assessments rather than isolated risk factors.

While the model demonstrates promising predictive capacity, the authors emphasize the necessity of external validation in diverse populations to consolidate generalizability. Future research may also explore integrating genetic and microbiome data to further refine risk stratification.

In conclusion, the study presents a sophisticated, age-specific nomogram-based model that quantifies colorectal cancer risk by synergizing lifestyle and metabolic variables. This tool not only enriches our understanding of colorectal cancer etiology but also offers a practical framework for personalized, preventive healthcare interventions.

By translating complex epidemiological data into accessible risk scores, the model empowers individuals and clinicians alike to engage in evidence-based decision-making, fostering a proactive approach to colorectal cancer prevention. Its deployment in routine health examinations could herald a new era of precision oncology in population health management.

Subject of Research: Lifestyle factors and their role in colorectal cancer risk prediction using an age-based nomogram model.

Article Title: Lifestyle factors and colorectal cancer prediction: A nomogram-based model

Article References: Seo, W., Jung, S.Y., Jang, Y. et al. Lifestyle factors and colorectal cancer prediction: A nomogram-based model. BMC Cancer 25, 1240 (2025). https://doi.org/10.1186/s12885-025-14674-z

Image Credits: Scienmag.com

DOI: https://doi.org/10.1186/s12885-025-14674-z

Tags: advanced statistical methods in health researchage-specific cancer risk dynamicscolorectal cancer morbidity and mortalitycolorectal cancer risk predictioncomprehensive health examinations datasetearly detection of colorectal cancerLASSO regression in cancer researchlifestyle factors influencing cancermodifiable lifestyle elements and cancernational health data analysispatient-specific cancer interventionstailored prevention strategies for cancer

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