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          達娜護士,人工智能經濟中最珍貴的勞動力

          Nick Lichtenberg
          2026-04-16

          如果想了解美國經濟的走向,別只盯著股票行情,應該看看這部美劇。

          文本設置
          小號
          默認
          大號
          Plus(0條)

          《匹茲堡醫護前線》中,凱瑟琳·拉納薩飾演達娜護士。圖片來源:Michael Tran—AFP/Getty Images

          如果想了解美國經濟的走向,別只盯著股票行情,應該去看看美劇《匹茲堡醫護前線》(The Pitt)。

          這部醫療劇由HBO Max出品,是2025年初最熱門的劇集之一。故事焦點并不是醫術精湛的外科醫生,也不是特立獨行的主治醫師,而是在匹茲堡急診室里連續奮戰15小時的護士和住院醫師。達娜護士絕非配角,這一角色由艾美獎得主凱瑟琳·拉納薩精彩演繹,業務出眾,薪水不高,是急診室里不可或缺的人,也越發意識到自己的優勢所在。她才是整部劇的核心。

          事實證明,護士達娜近乎完美地描繪了美國經濟繁榮的真正方向。

          思想實驗

          最近,喬治梅森大學(George Mason University)經濟學家亞歷克斯·塔巴羅克在頗具影響力的“邊際革命”博客上提出了一個思想實驗,重新構建了人工智能與就業的辯論。他寫道,想象一下,人工智能將導致40%的失業率。聽起來像是災難。再想象一下,人工智能將帶來每周三天工作制。聽起來很美好。他的核心結論是:兩種情況在數學上相同。60%的人全職工作,與100%的人工作60%的時間,總工時完全相同。

          塔巴羅克接受《財富》雜志深度采訪時表示,災難與美好之間的區別并非人工智能帶來的原始經濟效應,而在于社會如何分配人工智能帶來的豐饒收益。他的計算表明,從1870年至今工作時長減少了大約40%,這種下降是趨勢,而不是缺陷。樂觀的看法是,人工智能只會延續這一趨勢:壓縮工作,增加休閑,提升生活水平。

          問題所在

          塔巴羅克的樂觀愿景有個結構性障礙:老板。

          《財富》報道發現,即便人工智能將原本八小時的工作壓縮到只需兩小時,管理者也不會讓員工早點回家,而是用省下來的時間爭取更多產出??s短的工時沒有還給員工,只會被雇主榨取。

          這就是三天工作制理論的漏洞。生產率的提升真實存在,然而再分配并未發生。如果白領工作持續被壓縮,而企業獨占盈余,那么最重要的問題就不是人工智能能做多少工作。而是被替代的勞動者究竟何去何從。這一切和達娜護士有什么關系?勞動力市場已經朝著她的方向用腳投票。

          市場早已給出答案

          長期以來,護理行業因意義重大受到贊譽,因薪水微薄遭到忽視,如今卻成為人工智能經濟中結構性最穩固的職業。注冊護士中位數收入已達到93,600美元,幾乎是全美中位數49,500美元的兩倍。大城市平均基本工資超過102,000美元。認證注冊護士麻醉師的收入高達223,000美元。即便是旅行護士,平均收入也超過101,000美元。僅2023年以來,注冊護士薪酬就增長了11%,疫情開始以來,熟練護理人員薪資上漲了26.5%。

          《匹茲堡醫護前線》背景設定在匹茲堡并非偶然,這座后工業城市在制造業撤離后,依靠醫療和教育實現了轉型。如今這一發展軌跡正在全美上演。讓達娜護士不可替代的底層力量,也在重塑美國勞動力市場。

          7300萬嬰兒潮一代紛紛邁入古稀之年,變成醫院里的患者,也從護理崗位退休,供需兩端同時收緊。疫情期間,本可能十年才會出現的勞動力流失在短短36個月內集中爆發,引發大規模的職業倦怠和提前退休,推動2020年至2024年間工資上漲了26.5%。而沖擊分析師、律師助理和記者的人工智能浪潮幾乎沒影響到護理行業,因為親身在場、同理心和物理判斷迄今無法被自動化。

          現實中達娜的同行們供不應求,而且結構性短缺一時之間無法解決。這點已成為《匹茲堡醫護前線》第二季的劇情,醫院因一場網絡攻擊被迫臨時請回文員莫妮卡,她認為自己被裁員主要因為醫院過度數字化。

          人工智能為護士賦能,而不是取代

          與2026年初被人工智能沖擊的金融、法律或新聞等白領職業不同,人工智能對護理工作不是威脅,而是助力。

          環境式臨床記錄工具是能自動聽取醫患溝通并生成病歷記錄的軟件,可為護士節省數小時文書工作。人工智能輔助的分診系統幫急診科更快確定患者的優先級。自動化監控能在人類發現之前標記生命體征變化。每一項改進都在處理長期以來護士們最厭惡的工作:寫病歷、重復記錄和行政負擔。其余部分才是真正需要護士的工作。

          塔巴羅克告訴《財富》,他認為人工智能最被低估的好處正是醫學。有估算稱,治愈癌癥將為全球經濟帶來50萬億美元增益。(該估算基于統計生命的經濟價值,是衛生經濟學和聯邦成本效益分析使用的標準框架。)如果他的說法無誤,且未來十年人工智能真正實現臨床突破,那么執行治療、監護患者并將結果轉化為人性化語言的護士在未來經濟中將更加核心,不會邊緣化。

          人工智能無法從劇本中抹去的工作

          這正是《匹茲堡醫護前線》刻畫準確,而大多數就業評論忽略的細節。

          達娜難以替代,不僅僅因為資質,而是在現場實時運用資質的能力。她察言觀色,安撫危機中的家屬,發現監護儀遺漏的細節。這些不是更好的模型就能完成的任務,都是不可簡化為算法的人類特質。在2026年的市場正為此開出高價。

          轉行的人們大量涌入,護理專業入學人數持續攀升。為已擁有其他學位的成年人設計的護理學士速成項目,擠滿了逃離人工智能沖擊行業的勞動者。美國勞工統計局(Bureau of Labor Statistics)預測,未來十年對高級執業護士的需求將激增35%,這一增幅在任何行業都堪稱驚人,更何況在接近充分就業的行業。

          不過理想與可行并不是一回事。護理學士速成項目通常需要12到18個月,費用可能在5萬到10萬美元之間。臨床實習名額有限。護理學院師資短缺,所以項目每年拒絕的合格申請者成千上萬。如果說護理是通往中產階級的可靠新路徑,那么這扇大門真實存在,瓶頸也很明顯。

          護士職業的吸引力建立在一種矛盾上,對此《匹茲堡醫護前線》沒有回避。推高護士薪酬的人手短缺,正是行業承受巨大壓力的體現。職業倦怠,不安全的人員配比,強制加班和精神創傷,正是這些從一開始導致護士短缺。未來十年護理行業能否保持吸引力,與其說取決于薪酬,不如說取決于醫院和醫療體系是否改善留住護士的工作環境。薪水能讓人入行,但僅靠薪水可留不住人。

          塔巴羅克的研究表明,每一輪重大自動化浪潮最終都會壓縮工時并提升生活水平。如果人工智能延續這一模式,最終能站穩腳跟的勞動者并非工作未被自動化取代的人,而是轉向以親身在場、判斷和人際接觸為核心價值領域的人。

          工廠車間造就了戰后的中產階級。2026年,美國繁榮最可靠的落腳點越來越指向護士站,美國頂尖經濟學家已經解釋了原因。(財富中文網)

          為撰寫本報道,《財富》記者使用生成式人工智能作為研究工具。報道發布前編輯以核實信 息的準確性。

          譯者:夏林

          如果想了解美國經濟的走向,別只盯著股票行情,應該去看看美劇《匹茲堡醫護前線》(The Pitt)。

          這部醫療劇由HBO Max出品,是2025年初最熱門的劇集之一。故事焦點并不是醫術精湛的外科醫生,也不是特立獨行的主治醫師,而是在匹茲堡急診室里連續奮戰15小時的護士和住院醫師。達娜護士絕非配角,這一角色由艾美獎得主凱瑟琳·拉納薩精彩演繹,業務出眾,薪水不高,是急診室里不可或缺的人,也越發意識到自己的優勢所在。她才是整部劇的核心。

          事實證明,護士達娜近乎完美地描繪了美國經濟繁榮的真正方向。

          思想實驗

          最近,喬治梅森大學(George Mason University)經濟學家亞歷克斯·塔巴羅克在頗具影響力的“邊際革命”博客上提出了一個思想實驗,重新構建了人工智能與就業的辯論。他寫道,想象一下,人工智能將導致40%的失業率。聽起來像是災難。再想象一下,人工智能將帶來每周三天工作制。聽起來很美好。他的核心結論是:兩種情況在數學上相同。60%的人全職工作,與100%的人工作60%的時間,總工時完全相同。

          塔巴羅克接受《財富》雜志深度采訪時表示,災難與美好之間的區別并非人工智能帶來的原始經濟效應,而在于社會如何分配人工智能帶來的豐饒收益。他的計算表明,從1870年至今工作時長減少了大約40%,這種下降是趨勢,而不是缺陷。樂觀的看法是,人工智能只會延續這一趨勢:壓縮工作,增加休閑,提升生活水平。

          問題所在

          塔巴羅克的樂觀愿景有個結構性障礙:老板。

          《財富》報道發現,即便人工智能將原本八小時的工作壓縮到只需兩小時,管理者也不會讓員工早點回家,而是用省下來的時間爭取更多產出??s短的工時沒有還給員工,只會被雇主榨取。

          這就是三天工作制理論的漏洞。生產率的提升真實存在,然而再分配并未發生。如果白領工作持續被壓縮,而企業獨占盈余,那么最重要的問題就不是人工智能能做多少工作。而是被替代的勞動者究竟何去何從。這一切和達娜護士有什么關系?勞動力市場已經朝著她的方向用腳投票。

          市場早已給出答案

          長期以來,護理行業因意義重大受到贊譽,因薪水微薄遭到忽視,如今卻成為人工智能經濟中結構性最穩固的職業。注冊護士中位數收入已達到93,600美元,幾乎是全美中位數49,500美元的兩倍。大城市平均基本工資超過102,000美元。認證注冊護士麻醉師的收入高達223,000美元。即便是旅行護士,平均收入也超過101,000美元。僅2023年以來,注冊護士薪酬就增長了11%,疫情開始以來,熟練護理人員薪資上漲了26.5%。

          《匹茲堡醫護前線》背景設定在匹茲堡并非偶然,這座后工業城市在制造業撤離后,依靠醫療和教育實現了轉型。如今這一發展軌跡正在全美上演。讓達娜護士不可替代的底層力量,也在重塑美國勞動力市場。

          7300萬嬰兒潮一代紛紛邁入古稀之年,變成醫院里的患者,也從護理崗位退休,供需兩端同時收緊。疫情期間,本可能十年才會出現的勞動力流失在短短36個月內集中爆發,引發大規模的職業倦怠和提前退休,推動2020年至2024年間工資上漲了26.5%。而沖擊分析師、律師助理和記者的人工智能浪潮幾乎沒影響到護理行業,因為親身在場、同理心和物理判斷迄今無法被自動化。

          現實中達娜的同行們供不應求,而且結構性短缺一時之間無法解決。這點已成為《匹茲堡醫護前線》第二季的劇情,醫院因一場網絡攻擊被迫臨時請回文員莫妮卡,她認為自己被裁員主要因為醫院過度數字化。

          人工智能為護士賦能,而不是取代

          與2026年初被人工智能沖擊的金融、法律或新聞等白領職業不同,人工智能對護理工作不是威脅,而是助力。

          環境式臨床記錄工具是能自動聽取醫患溝通并生成病歷記錄的軟件,可為護士節省數小時文書工作。人工智能輔助的分診系統幫急診科更快確定患者的優先級。自動化監控能在人類發現之前標記生命體征變化。每一項改進都在處理長期以來護士們最厭惡的工作:寫病歷、重復記錄和行政負擔。其余部分才是真正需要護士的工作。

          塔巴羅克告訴《財富》,他認為人工智能最被低估的好處正是醫學。有估算稱,治愈癌癥將為全球經濟帶來50萬億美元增益。(該估算基于統計生命的經濟價值,是衛生經濟學和聯邦成本效益分析使用的標準框架。)如果他的說法無誤,且未來十年人工智能真正實現臨床突破,那么執行治療、監護患者并將結果轉化為人性化語言的護士在未來經濟中將更加核心,不會邊緣化。

          人工智能無法從劇本中抹去的工作

          這正是《匹茲堡醫護前線》刻畫準確,而大多數就業評論忽略的細節。

          達娜難以替代,不僅僅因為資質,而是在現場實時運用資質的能力。她察言觀色,安撫危機中的家屬,發現監護儀遺漏的細節。這些不是更好的模型就能完成的任務,都是不可簡化為算法的人類特質。在2026年的市場正為此開出高價。

          轉行的人們大量涌入,護理專業入學人數持續攀升。為已擁有其他學位的成年人設計的護理學士速成項目,擠滿了逃離人工智能沖擊行業的勞動者。美國勞工統計局(Bureau of Labor Statistics)預測,未來十年對高級執業護士的需求將激增35%,這一增幅在任何行業都堪稱驚人,更何況在接近充分就業的行業。

          不過理想與可行并不是一回事。護理學士速成項目通常需要12到18個月,費用可能在5萬到10萬美元之間。臨床實習名額有限。護理學院師資短缺,所以項目每年拒絕的合格申請者成千上萬。如果說護理是通往中產階級的可靠新路徑,那么這扇大門真實存在,瓶頸也很明顯。

          護士職業的吸引力建立在一種矛盾上,對此《匹茲堡醫護前線》沒有回避。推高護士薪酬的人手短缺,正是行業承受巨大壓力的體現。職業倦怠,不安全的人員配比,強制加班和精神創傷,正是這些從一開始導致護士短缺。未來十年護理行業能否保持吸引力,與其說取決于薪酬,不如說取決于醫院和醫療體系是否改善留住護士的工作環境。薪水能讓人入行,但僅靠薪水可留不住人。

          塔巴羅克的研究表明,每一輪重大自動化浪潮最終都會壓縮工時并提升生活水平。如果人工智能延續這一模式,最終能站穩腳跟的勞動者并非工作未被自動化取代的人,而是轉向以親身在場、判斷和人際接觸為核心價值領域的人。

          工廠車間造就了戰后的中產階級。2026年,美國繁榮最可靠的落腳點越來越指向護士站,美國頂尖經濟學家已經解釋了原因。(財富中文網)

          為撰寫本報道,《財富》記者使用生成式人工智能作為研究工具。報道發布前編輯以核實信 息的準確性。

          譯者:夏林

          If you want to understand where the American economy is going, don’t watch stock tickers. Watch The Pitt.

          The HBO Max medical drama that became one of the most talked about shows of early 2025 doesn’t center on a brilliant surgeon or a rogue attending physician. It centers on nurses and residents grinding through a single 15-hour shift in a Pittsburgh emergency department. Nurse Dana—competent, underpaid, indispensable, and increasingly aware of her own leverage—isn’t a supporting character, as masterfully played by the Emmy-winning Katherine LaNasa. She’s the whole point.

          She’s also, it turns out, a near-perfect portrait of where American prosperity is actually heading.

          The thought experiment

          Alex Tabarrok, a George Mason University economist, recently posed a thought experiment on his influential Marginal Revolution blog that reframes the entire AI jobs debate. Imagine, he wrote, that AI was going to create a 40% unemployment rate. Sounds catastrophic. Now imagine AI was going to create a three-day workweek. Sounds wonderful. His punch line: Those two scenarios are mathematically identical. Sixty percent of people employed full-time produce the same aggregate working hours as 100% employed at 60% of the hours.

          The difference between catastrophe and wonderland, Tabarrok told Fortune at greater length, is not about the raw economics of AI. It’s how society chooses to distribute the gains from AI abundance. His own calculations suggested that between 1870 and today, working hours fell roughly 40%—and that decline was a feature, not a bug. The optimistic case is that AI simply continues the trend: compressing work, expanding leisure, lifting living standards.

          The catch

          But Tabarrok’s optimistic vision has a structural obstacle: the boss.

          Fortune’s own reporting found that even as AI has compressed what used to take eight hours into as little as two, executives aren’t sending workers home early. They’re filling the reclaimed time with more output. The hours aren’t being returned to workers. They’re being extracted by employers.

          This is the gap in the three-day workweek theory. The productivity gains are real. The redistribution isn’t happening. And if white-collar work keeps compressing while companies pocket the surplus, the question that matters most isn’t how much work AI can do. It’s where the displaced workers actually go. What does any of this have to do with Nurse Dana? The labor market is already voting with its feet, and it’s headed in her direction.

          The market is already answering

          Nursing—long celebrated for its meaning and quietly dismissed for its paycheck—has emerged as the most structurally durable career in the AI economy. The median registered nurse now earns $93,600, nearly double the national median of $49,500. In major cities, average base pay has crossed $102,000. Certified registered nurse anesthetists clear $223,000. Even travel nurses average over $101,000. RN pay has grown 11% since 2023 alone, with wages in skilled nursing care up 26.5% since the start of the pandemic.

          The Pitt is set in Pittsburgh for a reason: It’s a postindustrial city that reinvented itself around health care and education after manufacturing left. That arc is now playing out nationally. The forces that made Nurse Dana’s labor indispensable are the same ones reshaping the entire U.S. workforce.

          Seventy-three million baby boomers are flooding into their seventies as patients while simultaneously retiring from the nursing workforce, squeezing supply and demand from both directions at once. During COVID, what might have been a decade of workforce attrition happened in the blink of 36 months or so, triggering mass burnout and early retirements that sent wages up 26.5% between 2020 and 2024. And the AI wave that is disrupting analysts, paralegals, and journalists has barely touched nursing—because presence, empathy, and physical judgment are, so far, unautomatable.

          Dana’s real-world counterparts aren’t just in demand. They’re in a structural shortage with no near-term resolution. This has actually been a plot point of The Pitt’s second season, with a cyber-hack forcing the hospital to temporarily bring back hospital clerk Monica, who blames her layoff on the hospital overly digitizing.

          What AI does for nurses, not to them

          Unlike the white-collar careers that AI is disrupting in early 2026, such as finance, law, or journalism, AI isn’t a threat to nursing work. It’s a tailwind.

          Ambient clinical documentation tools—software that listens to patient encounters and generates chart notes automatically—are already cutting hours of paperwork from nursing shifts. AI-assisted triage systems help emergency departments prioritize patients faster. Automated monitoring flags vital changes before a human might catch them. In each case, the technology is handling the tasks that nurses have long described as the worst parts of the job: charting, redundant documentation, and administrative drag. What’s left is the work that actually requires a nurse.

          Tabarrok told Fortune he believes AI’s most underappreciated upside is medicine itself, citing estimates that a cure for cancer would represent a $50 trillion boost to the global economy. (The estimate draws on the economic value of statistical life, a standard framework used in health economics and federal cost-benefit analysis.) If he’s right—and AI produces genuine clinical breakthroughs in the next decade—the nurses administering those treatments, monitoring those patients, and translating those outcomes into human terms become more central to the economy, not less.

          The job AI can’t write out of the script

          This is the detail that The Pitt gets right that most workforce commentary misses.

          Dana isn’t hard to replace just because of her credentials. She’s hard to replace because of what she does with them in real time: reading the room, deescalating a family in crisis, catching what the monitor missed. Those are not tasks awaiting a better model. They are irreducibly human. And the market is valuing them at a high rate in 2026.

          Career changers are coming around. Nursing school enrollment is climbing. Accelerated bachelor’s programs—designed for adults who already hold a degree in another field—are filling with workers fleeing AI-disrupted industries. The Bureau of Labor Statistics projects demand for advanced-practice nurses will surge 35% over the next decade, a number that would look extraordinary in any sector, let alone one already at effective full employment.

          But aspirational and accessible aren’t the same thing. Accelerated bachelor of science in nursing programs typically take 12 to 18 months and can cost $50,000 to $100,000. Clinical placement slots are limited. Faculty shortages at nursing schools have forced programs to turn away tens of thousands of qualified applicants each year. If nursing is the new reliable path to the middle class, the door is real, but the bottleneck is significant.

          And the profession’s appeal rests on a tension that The Pitt doesn’t shy away from. The same scarcity driving wages up is a symptom of a profession under enormous strain. Burnout, unsafe staffing ratios, mandatory overtime, and moral injury—these are the conditions that created the shortage in the first place. Whether nursing remains aspirational over the next decade depends less on nurses’ pay and more on whether hospitals and health systems invest in the conditions that keep nurses at the bedside. Pay got them in the door. It won’t keep them there alone.

          Tabarrok’s history shows that every major wave of automation has eventually compressed working hours and raised living standards. If AI continues that pattern, the workers who land on their feet won’t be the ones whose jobs survived automation. They’ll be the ones who moved into fields where presence, judgment, and human contact are the entire product.

          The factory floor built the postwar middle class. In 2026, the most reliable address for American prosperity increasingly has a nurses’ station attached—and one of the country’s top economists just told you why.

          For this story, Fortune journalists used generative AI as a research tool. An editor verified the accuracy of the information before publishing.

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