Personalized Support Program Improves Smoking Cessation for Cervical Cancer Survivors – UCLA Health

oncodaily - UCLA study shows program doubles quit rates for women and offers a cost-effective approach A new study led by UCLA researchers suggests that a personalized counseling program can significantly help […]

AI Summary: A UCLA-led trial found that a tailored support program for women treated for cervical precancer significantly doubled smoking-cessation rates versus usual care. The intervention combined individualized counseling, follow-up, and survivor-focused resources, proving both clinically impactful and cost-effective — because apparently telling people to “just quit” still isn’t working.

#healthcare #publichealth #oncology #behavioralhealth #cancerresearch

3 months / medicalxpress

3 months / medicalxpress

3 months / oncodaily

3 months / medicalxpress


Back to Top / Sat, March 14, 2026, 6:21 am / permalink 20747 / 4 stories in 3 months /




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