1 / 75

Cora Lee Wetherington, Ph.D. Women & Gender Research Coordinator National Institute on Drug Abuse Women Across the L

Cora Lee Wetherington, Ph.D. Women & Gender Research Coordinator National Institute on Drug Abuse Women Across the Life Span Conference July 12-13, 2004 Baltimore Marriott Inner Harbor. Gender Differences in Drug Abuse Across the Life Span . Gender Differences in Drug Abuse.

Leo
Download Presentation

Cora Lee Wetherington, Ph.D. Women & Gender Research Coordinator National Institute on Drug Abuse Women Across the L

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Cora Lee Wetherington, Ph.D. Women & Gender Research Coordinator National Institute on Drug Abuse Women Across the Life Span Conference July 12-13, 2004 Baltimore Marriott Inner Harbor Gender Differences in Drug Abuse Across the Life Span

  2. Gender Differences in Drug Abuse • Gender Differences: The Numbers • Gender Differences: Animal Models • Gender Differences: Menstrual Cycle • Gender Differences: Predictors & Progression • Gender Differences: Treatment

  3. Gender Differences: The Numbers Population prevalence data • Drug use: greater for males than females • Drug dependence: greater for males than females • 9.2% Males • 5.6% Females (1994 Nat’l Comorbidity Survey) Arefemales less vulnerable to drug abuse than males?

  4. Gender Differences: The Numbers Calculate use prevalence only among individuals with opportunity to use Van Etten et al. (1999) Study drugs: Marijuana, Cocaine, Heroin, Hallucinogens Data Source: 1993 NHSDA Findings: • Opportunity to use: greater for males than for females. • Among individuals with opportunity to use : males and females are equally likely to initiate use.

  5. Opportunity to Use Drugs 70 60 Male 50 Female 40 Percent 30 20 10 0 Marijuana Cocaine Hallucinogens Heroin

  6. Percent Use Given an Opportunity

  7. Gender Differences: The Numbers Calculate Dependence Only among Users: • Males and females = likely to become dependent on cocaine tobacco heroin inhalants hallucinogens analgesics Anthony et al. (1994) (Data Source: National Comorbidity Survey)

  8. Gender Differences: The Numbers Calculate Dependence Only among Users: • Males more likely than females to become dependent on marijuana alcohol Anthony et al. (1994) Data Source: National Comorbidity Survey

  9. Gender Differences: The Numbers Calculate Dependence Only among Users: • Females more likely than males to become dependent on anxiolytics or sedatives or hypnotics Anthony et al. (1994) (Data Source: National Comorbidity Survey)

  10. Gender Differences: The Numbers Do prevalence data, adjusted for opportunity, suggest that females are less vulnerable to drugs than males ? No. If females are offered drugs, they are as likely as males to use them: marijuana, cocaine, heroin, hallucinogens. No. If females use drugs, they are as likely as males to become dependent; exceptions in both directions. Caveat:Females are less likely to receive drug offers.

  11. Gender Differences: The Numbers All Age Groups vs. Adolescents

  12. Gender Differences: The Numbers Monitoring the Future Survey 1975 - Present Annual prevalence of “illicit drug use other than marijuana” • 12th graders: > for boys than girls • (exceptions: 1975 & 1981 girls > boys) • 10thgraders: > for girls than boys (since 1991) • 8th graders: > for girls than boys (since 1991)

  13. Gender Differences: The Numbers Dependence Among Adolescents Users: (Aged 12-17) Alcohol: males = females Marijuana: males = females Nicotine: males = females Cocaine : females > males 17.4%vs. 4.7% Kandel et al. (1997 ) Data Source: 1991, 1992, 1993 NHSDA

  14. Gender Differences: The Numbers Patterns of Drug Use

  15. GenderDifferences: The Numbers • CAVEAT: Usage data are from treatment samples. • Perhaps female heavy users are more likely than male heavy users to present for treatment.

  16. Gender Differences: The Numbers • DATOS Intake Data(n=10,010, 96 programs, 11 cities, 4 modalities) • Women, compared to men, were • ·less likely to have graduated from high school • ·almost half as likely to be employed • ·more likely to report • prior drug treatment • depression, suicidal attempts & thoughts • being troubled over current emotional/psychological problems • health problems • weekly or daily illegal activity (but < likely to be CJ involved) • ·more likely to report physical, sexual abuse or both • in year prior to treatment • occurring more than a year prior to treatment • Wechsberg et al. (1998)

  17. Gender Differences: The Numbers • Myth: Females are less vulnerable to drugs than males • 1. If given the opportunity, females are as likely as males • to use drugs • to become dependent • 2. Adolescent females, compared to males, • in 8th and 10th grades are more likely to use “any illicit • drugs other than marijuana” • are more likely to become dependent on cocaine

  18. Gender Differences: The Numbers • Myth: Males are more vulnerable than females • 3. Use patterns suggest that women • are more likely to use daily – cocaine, heroin, barbiturates • use more times per week – cocaine & heroin • use more grams per week – cocaine • 4. Women presenting for treatment have poorer levels of functioning. • Does this reflect a greater vulnerability to the impact of drugs • on women? (i.e., consequence) • Are women with poorer levels of functioning more vulnerable to drugs • than men with poorer levels of functioning? (i.e., etiologic)

  19. Gender Differences in Drug Abuse • Gender Differences: The Numbers • Gender Differences: Animal Models • Gender Differences: Menstrual Cycle • Gender Differences: Predictors & Progression • Gender Differences: Treatment

  20. GenderDifferences: Animal Models Do data from animal behavioral models suggest that males are more vulnerable to drugs than females?

  21. GenderDifferences: Animal Models • Behavioral Models: • Amount of Drug Self-Administered • Reinforcing Effectiveness • Speed of Acquisition of Self-Administration • “Prevalence” of Self-Administration • Relapse: Reinstatement following Extinction

  22. GenderDifferences: Animal Models • 1. Amount of Drug Self-Administered • Females, compared to males, self-administer more • alcohol Hill, 1978; Lancaster & Spiegel, 1992 caffeine Heppner et al., 1986 cocaine Morse et al., 1993; Matthews et al., 1999; Lynch & Carroll,1999 fentanyl Klein et al., 1997 heroin Carroll et al., 2001 morphine Alexander et al, 1978; Hill, 1978; Cicero et al, 2000 nicotine Donny et al., 2000

  23. GenderDifferences: Animal Models • 2. Reinforcing Effectiveness • Females reach higher progressive ratio breakpoint for cocaine (Roberts et al., 1989) nicotine (Donny et al., 2000) • Females have shorter latency for first nicotine infusion of the session (Donny et al., 2000)

  24. Gender Differences: Animal Models • Progressive ratio breakpoint (BP) (Roberts et al., 1989) • Males: 48.2 • Females: 264.1 • Females during estrus: approx. 400 • Estrus BP > metestrous/diestrous or proestrusBP

  25. GenderDifferences: Animal Models • 3. Speed of Acquisition of Self-Administration • Females acquire self-administration faster than males • cocaine-approx 1/2 the # sessions (Lynch & Carroll, 1999) • heroin-approx 2/3 the # sessions (Lynch & Carroll, 1999) • nicotine- at lowest dose only (Donny et al., 2000)

  26. GenderDifferences: Animal Models • 4. “Prevalence” of Self-Administration (SA) ·Similar percentage of female rats acquire heroin SA: 90.0% females vs. 91.7% males (Lynch & Carroll, 1999) ·More female rats acquire cocaine SA: 70% females vs. 30% males (Lynch & Carroll, 1999) ·More female Rhesus monkeys acquirePCP SA: • 100% females vs. 36.4% males(Carroll et al., 2000)

  27. GenderDifferences: Animal Models • 5. Relapse: Reinstatement following Extinction of Cocaine SA • Females, compared to males, • exhibit greater reinstatement of extinguished responding • “relapse” with a lower priming dose • Lynch & Carroll (2000)

  28. GenderDifferences: Animal Models • Behavioral Models: • Amount of Drug Self-Administered • Reinforcing Effectiveness • Speed of Acquisition of Self-Administration • “Prevalence” of Self-Administration • Relapse: Reinstatement following Extinction

  29. Gender Differences in Drug Abuse • Gender Differences: The Numbers • Gender Differences: Animal Models • Gender Differences: Menstrual Cycle • Gender Differences: Predictors & Progression • Gender Differences: Treatment

  30. Hormonal Changes During the Menstrual Cycle

  31. Gender Differences: Menstrual Cycle Pharmacokinetics (Humans) : Cocaine • Pharmacokinetics of i.v. 0.2 and 0.4 mg/kg cocaine: • peak plasma levels • time to reach peak plasma level (Tmax) • elimination half life • AUC • No differences among males, females (luteal), females (follicular) Exception: Tmax for 0.4 mg/kg • Females • follicular phase: 4.0 min • luteal phase: 6.7 min •Males: 8.0 min Mendelson et al. (1999)

  32. Gender Differences: Menstrual Cycle • ORAL d-AMPHETAMINE • Subjective effects > follicular than luteal: • > feeling of “high” • > euphoria (ARCI MBG) • > energy & intellectual efficiency (ARCI BG) • > liking the drug • > wanting the drug • Justice & de Wit (1999)

  33. Gender Differences: Menstrual Cycle • SMOKED COCAINE • Repeated doses smoked cocaine (0, 6, 12.5 or 25 mg) • In follicular phase (v. luteal phase) • Higher ratings of “high” • Higher ratings of “good drug effect” Evans et al. (2002)

  34. Gender Differences: Menstrual Cycle • NICOTINE CESSATION STUDY • Quitters in the late luteal phase, vs follicular phase: • more withdrawal symptoms • more depressive symptomatology • Implications for timing of initiation of cessation • Perkins (2000)

  35. Gender Differences: Menstrual Cycle • CUE-INDUCED NICOTINE CRAVING • Follicular phase females reported significantly less craving than • luteal phase females • males • Franklin et al. (2004)

  36. Difference Scores in Cue-Induced Craving C R A V I N G S C O R E p < .04 All Males Females F = Follicular L = Luteal F L Early F Late L On a scale of 1 to 10, how much do you desire a cigarette at this moment?

  37. Gender Differences: Menstrual Cycle • NICOTINE CESSATION • Greater abstinence when cessation is initiated in • the follicular phase. • Abstinence rates at 9 weeks post-quit date: • All women: 46% • Follicular phase quit date: 69% • Luteal phase quit date: 29% • Franklin et al. (CPDD, 03)

  38. Gender Differences: Menstrual Cycle • SHORT-TERM ABSTINENCE & WEIGHT GAIN • 20 highly dependent women, not planning to quit • Engaged in 1 wk abstinence • Results: • Mean weight gain in abstainers: 3.1 lbs • Abstinent in luteal phase: 5.3 lbs. • Abstinent in follicular phase: 1.5 lbs • Pomerleau et al., 2000

  39. Gender Differences: Menstrual Cycle • Smoking Cessation Implications: • Quit in the Follicular Phase • Less desire to smoke • Less desire to relieve negative affect • Fewer withdrawal symptoms • Less depressive symptomatology • Less cue-induced craving • Less weight gain • Better abstinence

  40. Gender Differences in Drug Abuse • Gender Differences: The Numbers • Gender Differences: Animal Models • Gender Differences: Menstrual Cycle • Gender Differences: Predictors & Progression • Gender Differences: Treatment

  41. Gender Differences: Predictors & Progression • Depression: greater predictor of drug use by male than by female adolescents (Costello et al., 1999) • Conduct disorders: greater predictor of drug use and dependence by female than by male adolescents (Costello et al., 1999) • Aggressiveness: predictor of drug use by boys, but not girls (Ensminger, 1992)

  42. Gender Differences: Predictors & Progression • Cigarette use: greater predictor of progression to illegal • drug use by girlsthan by boys (Kandel et al., 1992,1998) • Smoking during pregnancy: associated with smoking by • preadolescent female offspring, but not male (Kandel et al., • 1994; Weissman et al., 1999)

  43. Gender Differences: Predictors & Progression • Early vs. Late Initiators of Drug Use • - Boys who develop abuse or dependence: • initiate drug use earlier than boys who do not • develop abuse or dependence • - Girls who develop abuse or dependence: • initiate drug use later than girls who do not • develop abuse or dependence • Costello et al. (1999)

  44. Gender Differences: Predictors & Progression • Among youth who became dependent before age 16, • boys used earlier than girls: • Cannabis 2.0 years earlier • Smoking 3.5 years earlier • Any substance 2.5 years earlier • Among youth who did not become dependent before • age 16, no gender differences in age of onset of first use. • Costello et al. (1999)

  45. Gender Differences: Predictors & Progression Family characteristics more predictive of drug use in females than males: • Maternal • alcoholism (Boyd et al., 1993) • drug abuse (Boyd et al., 1993) • Low parental • attachment (Ensminger et al., 1982; Brook et al., 1993) • monitoring (Krohn et al., 1986) • concern (Murray et al., 1983) • Unstructured home environment (Block et al., 1988) • Dysfunctional family (Chatham et al., 1999)

  46. Gender Differences: Predictors & Progression Peer Difficulties & Parental Stress as Predictors of Monthly “Bursts” in Use of Tobacco, Marijuana & Alcohol • 181 Oregon adolescents aged 11-14 in 1- vs. 2-parent families • RESULTS • Peer Difficulties • Predictor for boys in both family types • Not a predictor for girls • Parental stress • Predictor for girls in 1-parent, but not 2-parent, families • Not a predictor for boys • Dishion & Skaggs (2000)

  47. Gender Differences: Predictors & Progression Childhood Sexual Abuse (CSA) Very high rates of CSA reported by women in treatment. Does this mean that CSA plays an etiologic role in drug dependence?

More Related