| Literature DB >> 19789406 |
Ben Y Reis1, Isaac S Kohane, Kenneth D Mandl.
Abstract
OBJECTIVE: To determine whether longitudinal data in patients' historical records, commonly available in electronic health record systems, can be used to predict a patient's future risk of receiving a diagnosis of domestic abuse.Entities:
Mesh:
Year: 2009 PMID: 19789406 PMCID: PMC2755036 DOI: 10.1136/bmj.b3677
Source DB: PubMed Journal: BMJ ISSN: 0959-8138
Abuse related ICD-9 codes comprising narrow case definition
| ICD-9 | Description |
|---|---|
| 995.5 | Child maltreatment syndrome |
| 995.50 | Child abuse, unspecified |
| 995.51 | Child emotional/psychological abuse |
| 995.52 | Child neglect (nutritional) |
| 995.53 | Child sexual abuse |
| 995.54 | Child physical abuse |
| 995.59 | Child abuse/neglect (not classified elsewhere) |
| 995.80 | Adult maltreatment, unspecified |
| 995.81 | Adult physical abuse |
| 995.82 | Adult emotional/psychological abuse |
| 995.83 | Adult sexual abuse |
| 995.84 | Adult neglect (nutritional) |
| 995.85 | Other adult abuse and neglect |
| E967.0 | Perpetrator of child and adult abuse: by father, stepfather, or boyfriend |
| E967.1 | Perpetrator of child and adult abuse: by other specified person |
| E967.2 | Perpetrator of child and adult abuse: by mother, stepmother, or girlfriend |
| E967.3 | Perpetrator of child and adult abuse: by spouse or partner |
| E967.4 | Perpetrator of child and adult abuse: by child |
| E967.5 | Perpetrator of child and adult abuse: by sibling |
| E967.6 | Battering by grandparent |
| E967.7 | Perpetrator of child and adult abuse: by other relative |
| E967.8 | Perpetrator of child and adult abuse: by non-related caregiver |
| E967.9 | Perpetrator of child and adult abuse: by unspecified person |
| V15.41 | History of physical abuse—rape |
| V15.42 | History of emotional abuse—neglect |
| V61.11 | Counselling for victim of spousal and partner abuse |
| V61.21 | Counselling for victim of child abuse |
Assault and intentional injury related ICD-9 codes added to codes in table 1 to form broader case definition
| E960 | Fight, brawl, rape |
|---|---|
| E960.0 | Unarmed fight or brawl |
| E960.1 | Rape |
| E961 | Assault—corrosive/caustic agent |
| E962.0 | Assault—poisoning with medical agent |
| E962.1 | Other solid and liquid substances |
| E962.2 | Assault—poisoning with gas/vapour |
| E962.9 | Unspecified poisoning |
| E963 | Assault—hanging/strangulation |
| E964 | Assault by submersion |
| E965.0 | Assault—handgun |
| E965.1 | Assault—shotgun |
| E965.3 | Assault—military firearms |
| E965.4 | Assault—firearm (not classified elsewhere) |
| E965.6 | Gasoline bomb |
| E965.8 | Assault—explosive (not classified elsewhere) |
| E965.9 | Unspecified explosive |
| E966 | Assault by cutting and piercing instrument |
| E968 | Assault by other and unspecified means |
| E968.0 | Assault—fire |
| E968.1 | Assault—push from high place |
| E968.2 | Assault—striking with object |
| E968.3 | Assault—hot liquid |
| E968.4 | Criminal neglect: abandonment of child, infant, or other helpless person with intent to injure or kill |
| E968.5 | Assault—transport vehicle |
| E968.6 | Assault—air gun |
| E968.7 | Human bite—assault |
| E968.8 | Assault (not classified elsewhere) |
| E968.9 | Assault (not otherwise specified) |
| E969 | Late effect assault |

Fig 1 Truncated ROC curve showing sensitivity (with 95% confidence intervals) achieved by model at different benchmark false alarm rates (1−specificity). Model achieves higher sensitivity with narrower case definition (see table 1) than with broader case definition (see table 2)
Performance of intelligent histories models using narrower case definition of abuse and broader case definition of abuse, assault, or intentional injury
| Sensitivity (%) | Specificity (%) | PPV (%) | Mean days from detection to first abuse diagnosis |
|---|---|---|---|
| 1.8 | 99.9 | 14.4 | 280 |
| 3.5 | 99.8 | 14.3 | 331 |
| 3.9 | 99.75 | 13.0 | 350 |
| 6.5 | 99.5 | 10.9 | 390 |
| 10.3 | 99.0 | 8.9 | 459 |
| 17.5 | 98.0 | 7.6 | 501 |
| 21.1 | 97.5 | 7.4 | 523 |
| 35.5 | 95.0 | 6.3 | 613 |
| 50.8 | 92.5 | 6.0 | 661 |
| 64.2 | 90.0 | 5.7 | 749 |
| 82.6 | 85.0 | 4.9 | 890 |
| 87.3 | 80.0 | 4.0 | 898 |
| 0.7 | 99.9 | 18.9 | 382 |
| 1.4 | 99.8 | 18.6 | 364 |
| 1.7 | 99.75 | 17.6 | 398 |
| 2.8 | 99.5 | 15.0 | 421 |
| 5.5 | 99.0 | 14.8 | 435 |
| 9.6 | 98.0 | 13.0 | 501 |
| 11.5 | 97.5 | 12.6 | 509 |
| 20.9 | 95.0 | 11.6 | 564 |
| 29.2 | 92.5 | 10.9 | 585 |
| 37.3 | 90.0 | 10.5 | 620 |
| 51.2 | 85.0 | 9.7 | 696 |
| 64.7 | 80.0 | 9.2 | 775 |
PPV=positive predictive value.

Fig 2 Average time in days (with 95% confidence intervals) from initial detection of high risk of abuse to first diagnosis of abuse recorded in dataset, measured for both narrow and broad case definitions. Plot includes detected abuse cases only. Model detects risk an average of 10-30 months in advance of first recorded diagnosis, depending on desired levels of specificity (shown on log scale for clarity). At high levels of specificity, fewer cases are detected, resulting in larger confidence intervals

Fig 3 Risk of abuse associated with average number of visits/year. Increased risk is associated with higher average number of visits. Partial risk score is that associated with different ranges of average number of visits/year

Fig 4 Distribution of abuse risk by general clinical category (see table A on bmj.com). Means and 25% and 75% centiles shown for each category. On average, diagnostic categories related to injury and psychological health are most predictive of abuse

Fig 5 “Treemap” visualisations of abuse risk associated with different diagnostic categories for women and men. Each rectangle represents a different clinical diagnostic category. Area of rectangle indicates prevalence of that category in abused population (only most prevalent conditions are shown). Colour indicates how predictive that diagnostic category is of receiving a future abuse diagnosis (white = lowest, dark red = highest). For example, alcohol and substance related disorders, the most prevalent category in men and women, are more prevalent among abused men than abused women (larger rectangle) but more predictive of abuse in women than men (darker red colour). Comparison between men and women in table 4, shows additional differences
Partial risk scores* for women and men for select clinical categories
| Category† | Women (95% CI) | Men (95% CI) |
|---|---|---|
| Alcohol, substance related mental disorders | 1.455 (1.440 to 1.471) | 1.253 (1.235 to 1.271) |
| Injuries from external causes | 0.885 (0.843 to 0.925) | 0.175 (0.098 to 0.249) |
| Poisoning | 1.326 (1.279 to 1.373) | 1.039 (0.960 to 1.115) |
| Affective disorders | 1.435 (1.410 to 1.459) | 1.726 (1.688 to 1.764) |
| Other mental conditions | 1.283 (1.260 to 1.305) | 1.640 (1.606 to 1.673) |
| Other psychoses | 1.065 (0.980 to 1.148) | 1.326 (1.209 to 1.434) |
*The higher the partial risk score, the more predictive the category of diagnoses is of abuse.
†First three categories listed are more predictive of abuse in women than in men. Second three categories listed are more predictive of abuse in men than in women.

Fig 6 Prototype visualisations designed to provide physician with a broad overview of a patient’s longitudinal history. Each small coloured bar represents diagnosis recorded for patient at particular point in time with risk (chronologically from top to bottom), in one of 12 general clinical categories (from left to right, see table A on bmj.com). Arrow on right indicates point in time at which high risk of abuse would have first been detected using threshold set for 95% specificity. For patient in top panel, with few visits stored in dataset, risk of abuse would have been detected 27 months before first recorded diagnosis of abuse. For patient in bottom panel, with large number of visits stored in dataset, abuse risk would have been detected 34 months before first recorded abuse diagnosis. Grey scale versions of these visualisations are available from the author