| Literature DB >> 32157581 |
Putri Dianita Ika Meilia1, Michael D Freeman2, Maurice P Zeegers2.
Abstract
The primary aim of forensic medical analysis is to provide legal factfinders with evidence regarding the causal relationship between an alleged action and a harmful outcome. Despite existing guides and manuals, the approach to formulating opinions on medicolegal causal inference used by forensic medical practitioners, and how the strength of the opinion is quantified, is mostly lacking in an evidence-based or systematically reproducible framework. In the present review, we discuss the literature describing existing methods of causal inference in forensic medicine, especially in relation to the formulation of expert opinions in legal proceedings, and their strengths and limitations. Causal inference in forensic medicine is unique and different from the process of establishing a diagnosis in clinical medicine. Because of a lack of tangibility inherent in causal analysis, even the term "cause" can have inconsistent meaning when used by different practitioners examining the same evidence. Currently, there exists no universally applied systematic methodology for formulating and assessing causality in forensic medical expert opinions. Existing approaches to causation in forensic medicine generally fall into two categories: intuitive and probabilistic. The propriety of each approach depends on the individual facts of an investigated injury, disease, or death. We opine that in most forensic medical settings, probabilistic causation is the most suitable for use and readily applicable. Forensic medical practitioners need, however, be aware of the appropriate approach to causation for different types of cases with varying degrees of complexity.Entities:
Keywords: Causal inference; Causality; Forensic medicine; Intuitive causation; Probabilistic causation
Mesh:
Year: 2020 PMID: 32157581 PMCID: PMC7245596 DOI: 10.1007/s12024-020-00220-9
Source DB: PubMed Journal: Forensic Sci Med Pathol ISSN: 1547-769X Impact factor: 2.007
Existing approaches to medicolegal causal analysis
| No. | Approach | Category | Application | Example | Strengths | Weaknesses |
|---|---|---|---|---|---|---|
| 1. | Intuitive approach (i.e. scientific common-sense) | Intuitive | Simple cases where the causal relationship “makes sense” based on fundamental scientific principles | Death following a gunshot wound to the head | Practical, does not need exceptional/additional resources | Not suitable for more complex cases where the causal relationship is not as readily apparent |
| 2. | Categorical intuitive deduction (i.e. the Sherlock Holmes style or educated guess) | Intuitive | Cases where there is only one plausible cause at the same time | Death following ingestion of insecticides in a previously healthy person with no signs of trauma | Impressive expert witness testimony | Not suitable for more complex cases where there is more than one plausible cause, requires a lot of professional experience, potentially misleading |
| 3. | Hill’s viewpoints [ | Intuitive-probabilistic | Cases with sufficient epidemiologic evidence and literature to assess competing causal hypotheses | Post-traumatic headache in a sexual-assault victim | Check-list-like criteria to guide causal inference | Temporal sequence is the only real “causal criterion” [76], the meaning or value of the other criteria can be unclear [77] |
| 4. | The American Medical Association (AMA) Guides to the Evaluation of Disease and Injury Causation [ | Intuitive-probabilistic | Primarily cases of injury with multiple plausible causes and work-related conditions | Lower back-pain in a factory worker who stands all-day | Provide elements that may be used for a systematic step-by-step causal analysis, primarily to assess work-relatedness | Lengthy and complicated process, does not produce a PC/quantification of the level of certainty |
| 5. | Forcier-Lacerte medicolegal causal analysis model [ | Intuitive-probabilistic | Primarily cases of injury with multiple plausible causes and cases related to insurance claims | An elderly woman with severe osteoporosis who sustains a slip-and-fall resulting in several fractured ribs | Provide elements that may be used for a systematic step-by-step causal analysis, categorizes possible causes into (1) the accident, (2) preexisting health status, and (3) intervening event. | Lengthy and complicated process, does not produce a PC/quantification of the level of certainty |
| 6. | The epidemiology-based approach by Siegerink et al. [ | Probabilistic | Civil litigations or cases of tort, where the issue is primarily about the proportional liability of multiple plausible causes | The risk of lung cancer in a factory worker exposed to asbestos, who is also a heavy smoker with a family history of lung cancer | Fits both the sufficient cause model and the counterfactual model, offers proportional liability for each component cause (i.e. the unlawful act plus other possible factors) | Could overestimate the number of components of the sufficient cause, leading to an underestimation of liability, all components are considered as of equal importance, while from a legal perspective some causes may be more important than others (e.g. unlawful act vs genetics) |
| 7. | The 3-step medicolegal causation approach by Freeman [ | Probabilistic | Cases of injuries with multiple plausible causes that do not require a high degree of energy, preexisting conditions which only become symptomatic after relatively minor trauma, or conditions with an insidious symptom onset | An elderly woman with shoulder pain after a minimal-damage rear-impact collision | Practicable, systematic, fits the standards of both medical and legal practice by establishing (1) plausibility, (2) temporality, and (3) the absence of a more probable alternative explanation (differential etiology) | Requires sufficient epidemiologic data and comprehension of epidemiologic methods to compare risks of differential etiologies |
| 8. | The forensic epidemiology approach [ | Probabilistic | Highly complex cases with multiple plausible causes | Peripartum cardiomyopathy in a young woman following exposure to doxorubicin | Systematic, provides a scientifically valid and verifiable quantification of probability in the form of a comparative risk ratio (CRR) and a probability of causation (PC), results are suitable for presentation in a court of law | Uses epidemiologic principles, methods, and data to formulate a probability, the analyses and calculations can be quite complicated, might not be suitable for day-to-day forensic medical practice |