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Lifestyle Advice to Patients with Bladder Cancer: A National Survey of Dutch Urologists.

BLADDER CANCER(2024)

Radboud Univ Nijmegen

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Abstract
BACKGROUND: Not much is known about the extent to which urologists discuss lifestyle with patients with bladder cancer (BC), despite patients considering urologists as an important source of information and motivation. OBJECTIVE: To determine how often lifestyle is asked about, advised on, and referred for by Dutch urologists to patients with BC, as well as to evaluate urologists' perceptions and barriers. METHODS: An anonymous online survey was sent to Dutch urologists. The survey included questions on demographics, awareness of guidelines, clinical practice (asking about, advising on, and referring for lifestyle), perceptions, and barriers with regard to smoking, body weight, physical activity, diet, alcohol consumption, and fluid intake. RESULTS: Most of the 49 respondents were male, affiliated with a non-academic hospital, and had over 10 years of experience. Smoking appeared to be the only lifestyle factor that patients are advised on, with 90% of urologists advising >75% of their patients. Advice on other lifestyle factors was far less common, with 63-92% of urologists giving < 50% of their patients advice. Referral rates were low for all lifestyle factors. Lifestyle advice was generally perceived as (very) important. Almost all respondents reported one or more barriers in giving lifestyle advice. A lack of time and a perceived lack of patient interest and motivation were reported most. CONCLUSIONS: Apart from advice on smoking cessation, lifestyle advice is not frequently provided by urologists to patients with BC. Although urologists perceive lifestyle as important, they report several barriers to providing lifestyle advice and referring patients.
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Key words
Urinary bladder neoplasms,life style,health promotion,smoking cessation,urologists,practice patterns,physicians',surveys and questionnaires,referral and consultation
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