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PBS高端访谈:生活方式或提高医疗保险额度

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Hari Sreenivasan: What you pay for health insurance is increasingly a complex web of formulas. And now, your personal data, everything from where you live, to what clothing you buy, to your magazine subscriptions, may factor into what you pay or whether you get coverage at all.
In a series of reports co-published with NPR, the investigative non-profit news organization pro Publica is looking into the strategies insurance companies are using. And joining us now from Denver is Pro Publica reporter Marshall Allen. Marshall, first, what sorts of data are they looking at? And what sort of inferences can they make from that?

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Marshall Allen: Well, that's a good question, Hari. They're looking at all different types of personal and proprietary and public information. The kinds of things that people would normally assume to be private. And I bet probably most of the viewers in your audience right now are having their data gathered by the data brokers that are teaming up with the health insurance companies to analyze this. And so the data that they're gathering would include your education record, your property records, any debts you might have, your income level, your race and ethnicity. Even social media interactions. They're gathering those. So, they're gathering all this information, and they're putting it into these complex computer algorithms, and then they're spitting out predictions about how much we might cost based on all these economic and lifestyle attributes.

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Hari Sreenivasan: So, give me some examples.

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Marshall Allen: Well, so for example, so some of the inferences they make are creepy, I guess. You know you could say this kind of turns the creepiness level up a bit. For example, you know, they can tell if a woman has changed her name. And so, they say if a woman has changed her name in the last 24 months she may have recently gotten married or maybe she recently got divorced. And so she could be considering, you know, getting pregnant soon or maybe she's stressed from that divorce and so she's going to have a lot of mental health care costs. Or, you know, if you're a low-income minority, they would assume that you are living in a dangerous and dilapidated neighborhood, and so you could be at higher risk of health cost. Or another one is if a woman has bought plus-size clothing, they would predict that she might be more likely to be depressed, which could also lead to higher health care costs. So these are things that they're looking at, trends in the data for groups of people, and then they're attributing the inferences to individuals within that group, and kind of one of the fundamental problems is that for any individual, this could just be wrong.

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Hari Sreenivasan: And so what if they're wrong about this? You're still going to be falling into a bracket based on this group, and the suspicion that they have that you are part of it?

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Marshall Allen: Yeah, I mean they're scoring us and predicting our health care costs based on the groups that we fall into. And so you know, I went to LexisNexis and obtained, they'll give you a certain portion of your data, and you know, it was like a creepy walk down memory lane for me. You know, they had data for me going back 25 years to the address of the home I grew up in in Golden, Colorado. You know, all my old phone numbers. And with each of the addresses, you know, they had a little indicator there. Was this a high-risk neighborhood or not? And you know, I'm not, I grew up in a middle class kind of environment so I didn't grow up in any high risk neighborhoods. But it made me wonder what if I had. And when I talked to the industry, I mean they promise that they're only using this information for the purpose of helping people. So that what they would say, the argument for doing this is that they can do better case management. But, just as it could be used for good, it could also be used to discriminate. And, the health insurance industry has a long history of discriminating against sick people. That still goes on to this day.

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Hari Sreenivasan: Marshall Allen of Pro Publica joining us from Denver today. It is part of a yearlong reporting project called the health insurance hustle. You can find it on their websites. Thanks for joining us today.

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Marshall Allen: Thank you, Hari.

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重点单词   查看全部解释    
dilapidated [di'læpideitid]

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adj. 毁坏的,荒废的,要塌似的 动词dilapida

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environment [in'vaiərənmənt]

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n. 环境,外界

 
portion ['pɔ:ʃən]

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n. 部分,份,命运,分担的责任

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mental ['mentl]

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adj. 精神的,脑力的,精神错乱的
n. 精

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certain ['sə:tn]

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adj. 确定的,必然的,特定的
pron.

 
discriminate [di'skrimineit]

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vt. 区分,区别对待
vi. 辨别,差别对待

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depressed [di'prest]

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adj. 沮丧的,降低的,不景气的,萧条的,凹陷的,扁平

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bracket ['brækit]

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n. 支架,括号,档次
vt. 支撑,放在括号

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factor ['fæktə]

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n. 因素,因子
vt. 把 ... 因素包括

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suspicion [səs'piʃən]

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n. 猜疑,怀疑

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